The Taxonomies of Educational and Scientific Studies Role in
Centralized Informational Web-Oriented Educational Environment
Viktor B. Shapovalov
1 a
Yevhenii B. Shapovalov
1 b
, Roman A. Tarasenko
1 c
,
Stanislav A. Usenko
1 d
, Adrian Paschke
2 e
and Irina M. Shapovalova
3 f
1
The National Center “Junior Academy of Sciences of Ukraine”, 38-44 Degtyarivska Str., Kyiv, 04119, Ukraine
2
Fraunhofer FOKUS (with support of BMBF “EXPAND+ER WB3”), 31 Kaiserin-Augusta-Allee, Berlin, 10589, Germany
3
Secondary comprehensive school No. 69 of Kyiv, 25 Donetska Str., Kyiv, 03151, Ukraine sjb@man.gov.ua,
Keywords:
Cloud Technologies, Ontology, Educational Research, Taxonomy, Systematization.
Abstract:
The scientific/educational studies may be structured using the formalization of IMRAD approach that pro-
vides interoperability of data. The study focusing on the using of the studies’ results as part of the centralized
informational web-oriented educational environment. The structurization was provided on two studies – “De-
velopment of a rational approach for utilizing methane tank waste at LLC Vasylkivska chicken farm” and
“Development of a strategy for utilizing methane tank effluent”. The specific tools of CIT Polyhedron were
used to make specific tools related to processing of studies data. The audit tool provides comparing the newly
inputted data to existing data in taxonomies and highlights the cases of full corresponding of some elements of
works for existing ones (for example, objects of studies). The approach of integration of studies with educa-
tional ontologies (that is part of centralized informational web-oriented educational environment) is described.
The formalization of this process is described using mathematical expressions.
1 INTRODUCTION
Now, more than ever, science affects all aspects of hu-
man life. The latest scientific developments are often
and quickly implemented in the industry. However,
the scientific results are usually presented in human-
readable form and not in a machine-readable format,
so it is hard to process the knowledge using automated
informational technologies.
The basic structure of a typical research paper is
the sequence of Introduction, Methods, Results, and
Discussion (sometimes noted as IMRAD) (Oriokot
et al., 2011). Each section addresses a different ob-
jective. For example, the Introduction section moti-
vates the research problem that was discovered or the
known facts about the problem; the Method section
states what authors did to learn and address the issue
in a new solution, and what they achieved as results
in experiments is written in the Discussion section,
a
https://orcid.org/0000-0001-6315-649X
b
https://orcid.org/0000-0003-3732-9486
c
https://orcid.org/0000-0001-5834-5069
d
https://orcid.org/0000-0002-0440-928X
e
https://orcid.org/0000-0003-3156-9040
f
https://orcid.org/0000-0003-3156-9040
and what they had observed is discussed in the Re-
sults section.
The most common form of science reporting is a
written paper. Depending on the purpose, there are a
few different types of papers: Analytical Research Pa-
per, Argumentative (Persuasive) Research Paper, Def-
inition Paper, Compare and Contrast Paper, Cause and
Effect Paper, and Interpretative.
The most common research papers types are
shown in table 1 (Paperpile, 2019).
Nowadays, most of the papers (but not all of them)
are systemized by using scientometric databases.
However, educational research reports, which use sci-
entific methods, have not been systemized. Unlike
pupils, scientists already know their field of research
in detail and can determine their research hypothesis,
and they can do further analysis by themselves. Stu-
dents, instead, can’t do this. Automated informational
tools can help students in this scientific discovery and
analysis tasks.
The STEM (Science, Technology, Engineering
and Math) may be interpreted as using of the sci-
entific method in an educational process while pro-
viding academic research. This approach is only re-
cently applied in countries such as Ukraine. There
are various school competitions for scientific works,
128
Shapovalov, V., Shapovalov, Y., Tarasenko, R., Usenko, S., Paschke, A. and Shapovalova, I.
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment.
DOI: 10.5220/0012062100003431
In Proceedings of the 2nd Myroslav I. Zhaldak Symposium on Advances in Educational Technology (AET 2021), pages 128-143
ISBN: 978-989-758-662-0
Copyright
c
2023 by SCITEPRESS – Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)
Table 1: The most common research papers types.
Types of the Research
papers
Oriented amount of
words required
Specific characteristics
Analytical Research Pa-
per
3000+ Someone poses a question and then collect relevant data
from other researchers to analyse their different view-
points.
Argumentative (Persua-
sive) Research Paper
3000+ The argumentative paper presents two sides of a contro-
versial question in one paper.
Definition Paper 5000+ The definition paper describes facts or objective argu-
ments without using any personal emotion or opinion of
the author.
Compare and Contrast
Paper
5000+ Compare and contrast papers are used to analyse the dif-
ference between two viewpoints, authors, subjects or sto-
ries.
Cause and Effect Paper 3000+ Cause and Effect Paper trace probable or expected re-
sults from a specific action and answer the main questions
“Why?” and “What?”.
Interpretative Paper 3000+* An interpretative paper requires to use knowledge that
have gained from a particular case study.
Experimental Research
Paper
3000+* This type of research paper describes a particular experi-
ment in detail.
Survey Research Paper 5000+* This research paper demands the conduction of a survey
that includes asking questions to respondents.
* Depends on the purpose of the article and the requirements of the journal, institute, teacher.
such as the competition on scientific articles of the Ju-
nior academy of sciences of Ukraine and international
competitions (Intel ISEF). Also, the scientific method
can be used during the creation of thesis papers (for
masters’ degrees, bachelor’s degrees, etc.) and pupil’s
research reports. (for events noted before), or in sim-
pler, but more common form of essays. In addition,
students can report their results in scientific papers if
the quality of their work is satisfactory for the scien-
tific requirements. An overview of the types of educa-
tional research reports works is presented in table 2.
This paper focuses on the systematization and pro-
cessing of academic research reports. The problem to
be addressed is the lack of a structuring mechanism
that complicates the automated processing of such re-
ports.
2 LITERATURE REVIEW
The active dissemination and use of different sci-
entometrics databases continue to increase the con-
venience and efficiency of scientific data process-
ing, structuring, and systematization of research
and scientific results. Specialized databases for
structural science information are an integral part
of the information-support system for any scien-
tist. Scientometrics is the “quantitative study of sci-
ence, communication in science, and science pol-
icy” (Ramesh Babu and Singh, 1998), commonly re-
ferred to as the “science of science”. Scientomet-
rics is essential to help academic disciplines under-
stand various aspects of their research efforts, in-
cluding (but not limited to) the productivity of their
scholars (Ramesh Babu and Singh, 1998; Abramo
et al., 2011), the emergence of specializations (Pianta
and Archibugi, 1991), collaborative networks (New-
man, 2001), patterns of scientific communications
(Braun et al., 2001), and quality of research products
(Lawani, 1986). Metric studies have been developed
as a subsidiary branch of Library and Information Sci-
ence (LIS) (Khasseh et al., 2017). Often, scientomet-
rics applies bibliometrics, which measures the impact
of publications.
To increase the quality and performance of scien-
tometrics the ten principles of the “Leiden Manifesto
of Scientometrics” have been stated:
1. Quantitative evaluation should support qualitative
expert assessment.
2. Measure performance against the research mis-
sions of the institution, group, or researcher.
3. Protect excellence in locally relevant research.
4. Keep data collection and analytical processes
open, transparent and simple.
5. Allow those evaluated to verify data and analysis.
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
129
Table 2: Types of the educational research reports.
Types of the edu-
cational research
report
Oriented required
amount of the pages
Specific characteristics The event for which the re-
port was prepared
Esse In general, up to 10-
15 pages
Is simple and very flexible
on the content
Classes, completions of
school level
Research reports In general, up to 30-
100 pages
Relatively static structure;
similar to IMRAD
Competitions of Junior
academy of sciences of
Ukraine and Intel ISEF
Scientific paper Declared by the
source
Declared by the source Publication in the journal
Thesis papers In general, 40-100
pages
Relatively static structure
similar to IMRAD
Defence of the qualification
works
6. Account for variation by field in publication and
citation practices.
7. Assessment of individual research on a qualitative
judgment of their portfolio.
8. Avoid misplaced concreteness and false precision.
9. Recognize the systemic effects of assessment and
indicators.
10. Scrutinize indicators regularly and update them
(Khasseh et al., 2017).
Today, all existing scientometrics databases can be
divided into two major groups: international and na-
tional (Khasseh et al., 2017; Kostenko et al., 2015;
Mulla, 2012; Ravikumar et al., 2015; Pavlovskiy,
2017; Perron et al., 2017; Ram
´
ırez and Rodr
´
ıguez
Devesa, 2019). The most well-known interna-
tional databases are Springer, Scopus, Web of Sci-
ence, CiteseerX, Microsoft Academic, aminer, ref-
seek, BASE (Bielefeld Academic Search Engine),
WorldWideSciense, JURN, Google Scholar, Google
Patents, and others. National databases incorporate a
variety of bibliographic databases and a variety of li-
brary and university repositories. International scien-
tometric databases are characterized by a larger scale
and mandatory support for various languages, includ-
ing English. Also, a characteristic feature of such
databases is the availability and work with multiple
unique indices that have international recognition, for
example, the h-index (Kinouchi et al., 2018).
As scientific publications continue to grow expo-
nentially, the number of academic databases and sci-
entometrics databases increases, which supports gain-
ing insights into the structure and processes of sci-
ence (Perron et al., 2017). In this case, many sci-
entific publications are devoted to the principle of
working scientometrics databases, and their number
is growing. Thanks to them, concepts such as “meta-
data” of scientific articles began to be actively used
in scientometrics (Khasseh et al., 2017; Kostenko
et al., 2015; Mulla, 2012; Ravikumar et al., 2015;
Pavlovskiy, 2017; Perron et al., 2017; Ram
´
ırez and
Rodr
´
ıguez Devesa, 2019). Metadata is essential data
about data providing information such as titles, au-
thors, abstracts, keywords, cited references, sources,
bibliography, and other data. Metadata does not sub-
stitute the corresponding article, but it explicitly de-
scribes valuable information about the report.
By using scientometrics systems, researchers’
contributions in informatics and scientometrics were
previously quantified (Mulla, 2012). The principal
metadata indicators are:
The indicators and citation indices of journals.
The number of authors.
The number of publications.
The degree of cooperation is based on affiliation
data.
The disadvantage of this research is that it is de-
voted only to scientific articles. The authors noted
that their study could not cover students’ and pupils’
research reports because there is no single database
where they are all located.
The application of the principles of the “Leiden
Manifesto of Scientometrics” is stated and substanti-
ated, providing transparent monitoring and support of
research and encouraging constructive dialogue be-
tween the scientific community and the public. In
this work, the bibliometric base, which corresponds
to principles of the “Leiden Manifesto of Scientomet-
rics”, has been created. The proposed bibliometric
center did not address the systematization of students’
and pupils’ research reports. Still, the authors noted
the necessity of involvement of students’ and pupils’
research reports in their bibliometric center.
The approach of co-word analysis has been intro-
duced, and its application in scientometrics is sub-
stantiated in (Ravikumar et al., 2015). The trends
and patterns of scientometrics in journals has been re-
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
130
vealed by measuring the association strength of se-
lected keywords which represent the produced con-
cept and idea in the field of scientometrics. Also, the
authors have developed a web system for extraction
of keywords from the title and abstract of the arti-
cle manually. However, the web system proposed by
them cannot work with research reports of students
and pupils.
Another concept of analysis is iMetrics, or “in-
formation metrics”. Its application in scientomet-
rics is substantiated in (Milojevi
´
c and Leydesdorff,
2013). iMetrics is devoted to the scientometrics of
scientific journals in the field of informatics. The au-
thors note the possibility of applying their approach
to the systematization of the scientific works of stu-
dents and pupils. The research related to scientomet-
rics databases is shown in table 3.
Table 3: Researche related to scientometrics databases.
Subject of study The general result of the au-
thors study
Citation indices
of journals, num-
ber of authors of
the publication
their affiliation
The contributions of re-
searchers in the field of in-
formatics and scientometrics
(Mulla, 2012)
Principles of
the “Leiden
Manifesto of
Scientometrics”
Stated and substantiated
“Leiden Manifesto of Scien-
tometrics” (Kostenko et al.,
2015)
Co-word analysis The trends and patterns of
scientometrics in the jour-
nals were revealed (Raviku-
mar et al., 2015)
iMetrics (“infor-
mation metrics”)
iMetrics scientometric
system has been provided
(Milojevi
´
c and Leydesdorff,
2013)
Previously, ontological graphs were used to sys-
tematize scientific articles (Amami et al., 2017;
Boughareb et al., 2020; Perraudin, 2017; Parveen,
2018). Systematization and structuring in such
graphs are based on different approaches, such as
using of scientific article recommendation system
(Amami et al., 2017), Scientific Articles Tagging
system (Boughareb et al., 2020), machine learn-
ing (Perraudin, 2017), and automatic summarization
(Parveen, 2018). Also, ontologies can be used to pro-
vide interoperability through semantic technologies
(Alnemr et al., 2010). However, none of the proposed
ontological approaches for systematization and struc-
turing addresses the structuring of research reports of
students and pupils.
None of the scientometrics database systems pre-
viously proposed (Khasseh et al., 2017; Kostenko
et al., 2015; Mulla, 2012; Ravikumar et al., 2015;
Pavlovskiy, 2017; Perron et al., 2017; Ram
´
ırez and
Rodr
´
ıguez Devesa, 2019) can offer a universal solu-
tion for systematization and structured presentation of
research and scientific results to pupils and students.
Also, the disadvantages of all these systems are the
complete lack of many valuable parameters for pro-
cessing information about scientific works. These pa-
rameters are the scientific novelty of the article, the
practical value of the study, the hypothesis of the
study, subject and object of the research. Also, ex-
isting solutions do not allow for comparing the meta
data about the research reports between each other.
This work aims to propose and justify using an on-
tological system, which permits the systematization
of scientific articles with all advantages of existing
scientometrics systems and without disadvantages of
these systems. Which at the same time will not be de-
prived of the functionality of current scientometrics
systems and will meet the Leiden Manifesto for Sci-
entometrics.
As Proof of Concept (PoC) we propose to use
the existing cognitive IT platform Polyhedron as the
technical basis for solving this problem. The core
of the Polyhedron system consists of advanced and
improved functions of the TODOS IT platform de-
scribed in previous works. The polyhedron is a multi-
agent system that allows for transdisciplinary and acts
as an interactive component in educational and scien-
tific research (Stryzhak et al., 2014). Besides, the cog-
nitive IT platform Polyhedron contains a function for
comparison with standards which is called auditing
(Stryzhak et al., 2014; Globa et al., 2015, 2019). Poly-
hedron provides: semantic web support, information
systematization and ranking (Stryzhak et al., 2021),
transdisciplinary support, and internal search (Shapo-
valov et al., 2019), has all advantages of ontological
interface tools (Popova and Stryzhak, 2013), and the
construction of all chains of the process of transdis-
ciplinary integrated interaction is ensured (Velychko
et al., 2017). Due to active states for hyper-ratio
plural partial ordering (Volckmann, 2007; Nicolescu,
2008), the cognitive IT platform Polyhedron is an in-
novative IT technology for ontological management
of knowledge and information resources, regardless
of the standards of their creation. The user of the
Polyhedron IT system has an opportunity to use an
internal search function that has more views than the
external one because it provides information created
by experts.
Also, the proposed solution for the structuring
of educational and research projects can be used to-
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
131
gether with other modern developments in the aca-
demic field, like a virtual educational experiment
(Slipukhina et al., 2019), different tools to provide
development of ICT (Modlo et al., 2018), the use
of mobile Internet devices (Modlo et al., 2019), us-
ing the technology of augmented reality education
(Bilyk et al., 2022), online courses (Vlasenko et al.,
2020; Yahupov et al., 2020), distance learning in vo-
cational education and training institutions (Modlo
et al., 2019), educational and scientific environments
(Shapovalov et al., 2019).
As was investigated before, the main elements of
educational studies are represented by IMRAD nodes
and their specific subnodes related to a particular
study (Shapovalov et al., 2022). They may be de-
scribed by a set of formulas. According to the the-
ory of using IMRAD, each examination consists of an
Introduction, Methods, Results, and Discussion (that
in terms of informational systems, the discussion is
charged to processing – P):
{I, M, R, P} S (1)
where I node of ontology that integrates data related
to introduction; M subject of study: node of ontol-
ogy that integrates data related to methods; R node
of ontology that integrates data related to results; P
results of study’s results processing.
Each scientific study contains specific data struc-
tured by IMRAD, and it may be represented as a set
of tuples (corteges) that describe elements of specific
studies. The equations 2 and 3 are used to describe
representing two different studies structured by IM-
RAD:
S
I
= <I
I
, M
I
, R
I
, P
I
> (2)
S
II
= <I
II
, M
II
, R
II
, P
II
> (3)
Two different studies integrated into a single on-
tology will be described as the sum of IMRAD ele-
ments. Such representation is shown in equation 4:
hS
I
, S
II
i = hI
I
, M
I
, R
I
, P
I
, I
II
, M
II
, R
II
, P
II
i (4)
In such case, some specific elements of studies
are overlapping and other are not. For example, the
Method section of two different studies represented in
form of an ontology using IMRAD will be as follows:
M
I
= M
a
, M
b
, M
c
, M
d
(5)
M
II
= M
b
, M
d
, M
f
(6)
In such representation M
b
and M
d
belong to both
studies, and it is possible to use them as linking nodes
to connect the two studies:
M
b
M
I
, M
II
(7)
M
d
M
I
, M
II
(8)
It is worth noting that such representation of stud-
ies leads to the ontologization of the studies’ data.
The most specific terms may be used to connect to
different types of ontology-based knowledge, for ex-
ample, educational programs. However, such an ap-
proach was not conducted before. This study also
aims to provide interoperability between different
ontology-based knowledge systems using terms used
in conducted studies and other knowledge systems
(on the example of educational systems).
3 MATERIALS AND METHODS
3.1 Ontology Creation Mechanism
To create ontologies in Polyhedron, Google Sheets
were used to collect by expert who took the data man-
ually and structuring the information (see example in
figure 1). The sheets with research report data (struc-
ture file and numeric/semantic data file) have been
downloaded and saved in .xls format. The files have
been loaded to “editor.stemua.science”, part of Poly-
hedron. After that, the generation of the graph nodes
(in .xls) with their characteristics using the data struc-
tures in the file has been carried out. The obtained
graphs have been saved in .xml format and located in
the database. The graphs have been filled with seman-
tic and numeric information for ranking and filtering.
Ontological edges (relations) have been formed using
predicate equations, as described previously in (Vely-
chko et al., 2017).
3.2 Ranking Tools
Considering that, e.g., proposed reports A” and “B”
are technical, the results of the reported works can
be used to analyze the rationality of the implementa-
tion proposed in the concrete project. For instance, to
offer it, research reports A” and “B” were also com-
pared with each other using a ranking tool applying
the following criteria: “Short-term economic perspec-
tive”, “Long-term economic prospects”. For creating
a ranking, the ontologies have used the module Al-
ternative”, described in (Stryzhak et al., 2021). The
nodes of a graph have been filled with semantic data
to provide this ranking.
The ranking uses a grade scale from one to ten
points to underline the relevance coefficient. The
projects with a payback period of more than 25 years
have been evaluated with 1 point, with 20-25 years
of payback period with 2 points, from 15-20 years
of payback period with 3 points, from 10-15 years
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
132
Figure 1: Google sheet with data.
of payback period with 4 points, 6-10 years of pay-
back period with 5 points and with 1-5 years were
evaluated as 6-10 points, respectively, by the “Eco-
nomic attractiveness” criterion. A detailed evaluation
for projects with 1-5 years is provided due to its ut-
most interest for the investor’s “payback time”, which
determines investment expediency.
3.3 Auditing Tools
To provide an audit of the hypothesis of work A
and “B”, the “standard” graph (with which the com-
parison is done) and the “comparison” graph (which
is compared with the “standard”) have been created.
The “standard” ontology graph contains the data on
hypotheses, subjects, objects of research, keywords,
and other parameters of the research reports done be-
fore. For the “standard” graph, each parameter was
presented in a separate node. The content of this on-
tological graph “standard” is constantly updated and
supplemented.
The nodes of the “comparison” graph have been
represented as names of the works which need to be
audited with the “standard” graph. The parameters of
the work used to be audited with the “standard” graph
have been located in the metadata of each separate
node. The metadata type names were identical to the
terms of the nodes of the “standard” graph to enable
interaction between graphs.
3.4 Using Centralized Informational
Web-Oriented Educational
Environment Concept and Ensuring
Interdisciplinarity
The developed ontologies were saved in the same en-
vironment where elements of the centralized infor-
mational web-oriented educational environment were
saved. Its features were used to provide interoperabil-
ity with educational programs, methods, equipment,
ontology-based didactical materials, and other ontol-
ogy tools. As all such ontologies had the same graphs’
nodes names, we provided the integration between el-
ements of the centralized informational web-oriented
educational environment and proposed structurization
of academic studies. We used the same nodes and
provided links with each graph that it contains. For
example, the term temperature regime that is used in
educational programs is connected with all academic
programs in physics (part of topic energy, thermal
energy), chemistry (amount of topic energy of reac-
tion), and scientific study graph that was conducted
by young researcher on biogas production research
called temperature regime. Also, we can link this term
with a method called ensuring of requested tempera-
ture by a thermostat and with equipment dry air ther-
mostat. So, for this, we are using the term tempera-
ture regime to provide an interdisciplinarity approach
that is related to different fields of science and to vary-
ing types of data (educational plans, equipment that is
used, specific methods and specific personal studies).
4 RESULTS AND DISCUSSION
The general concept of the proposed ontology-based
graph model for Polyhedron research reports has a
specific, logically connected structure and can be rep-
resented as an ontology. After structuring, it is pos-
sible to describe the reports’ content in simpler to
understand presentation form. Besides, most results
can be domain-specific for each industry, and if the
current standards are correctly identified, these val-
ues will be easy to compare. Also, most research in
one field often uses the same equipment, materials,
chemicals, standard methods of analysis, literature,
etc., which allow comparing these works with each
other and correctly structuring them.
However, the main advantage of the proposed ap-
proach (besides structuring the research) is process-
ing results in terms of separated result parameters of
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
133
the reports. This supports data analysis, further pro-
cessing using ranking, and semantic data interoper-
ability. The separation of numeric data and its loca-
tion metadata class is possible due to the addresses
of the same field, describing the process using the
same (or similar) parameters of the process descrip-
tion and result parameters description. For example,
for most reports on anaerobic digestion, the process
parameters are temperature, type of substrate, reactor
volume, moisture content, initial pH, parameters; the
characteristics of efficiency of the process are biogas
yield, methane content, average pH during the pro-
cess, destruction process, etc. (Zhadan et al., 2021).
As all research reports will be simplified, this
approach will be especially relevant for pupils and
novice researchers with further potential use in the ed-
ucational process or to streamline the literature review
process for the new academic research.
4.1 Description of Scientific Works
Used to Provide Structuring
For example, the object of the study of research re-
port A is the disposal of anaerobic effluent. The
subject of the report’s research is the Cultivation of
Chlorella Vulgaris microalgae on effluent obtained af-
ter methane fermentation. The study aims to develop
a method of growing Chlorella Vulgaris in the efflu-
ent after methane fermentation. The practical signifi-
cance of this scientific work is the results, which will
contribute to the spread of biogas technologies. Also,
the proposed approach makes it possible to increase
the economic benefits of utilizing chicken manure by
converting the anaerobic digestion effluent into mi-
croalgae with a wide range of applications. The scien-
tific novelty of that research report is a method of uti-
lization of anaerobic digestion effluent by using mi-
croalgae, also had obtained cultures of Chlorella Vul-
garis that had adapted to the anaerobic digestion ef-
fluent. The working hypothesis was that the effluent
obtained after anaerobic digestion could be used as a
nutrient medium for microalgae Chlorella Vulgaris.
The object of the research report “B” study is the
disposal of anaerobic digestion effluent. The subject
of the research is the processing of anaerobic diges-
tion effluent into humates by the autocatalytic catal-
ysis method. The study aims to establish regulari-
ties of processing the solid fraction obtained during
the methane fermentation of chicken manure by the
autocatalytic catalysis method. The practical signifi-
cance of this scientific work is that the study indicates
the possibility of acquiring salts of humic and ful-
vic acids by the autocatalytic catalysis method. This
approach makes it possible to increase the economic
benefits of chicken manure disposal by converting
the anaerobic digestion effluent into a more valuable
product with a wide range of applications. Its sci-
entific novelty is that potassium humate had firstly
obtained from anaerobic digestion effluent. For the
first time, the efficiency of receiving humates from the
solid fraction of anaerobic digestion was investigated,
and the main regularities of the process were deter-
mined. The working hypothesis was that the solid
fraction of methane fermentation of chicken manure
can be recycled by the autocatalytic catalysis method.
(a)
(b)
Figure 2: The general view of the (a) research report A”
(b) research report “B” ontological graph.
For both research reports, A” and “B”, as a sub-
strate for anaerobic digestion, have used the chicken
manure from the same poultry farm. In this case,
chicken manure and its effluent, which has been ob-
tained by anaerobic digestion, were analyzed by the
same methods and indicators. Such indicators were:
Ash and dry content”.
“Determination of volatile fatty acids content” (in
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
134
terms of acetic acid).
“Determination of ammonium nitrogen content
with Nessler’s reagent”.
The equipment used to determine these indicators
was also the same. Therefore, how these works can be
structured and integrated using the cognitive IT plat-
form Polyhedron has been considered. All examples
of ontological nodes in the obtained graphs for fur-
ther potential information processing are presented in
table 4.
(a)
(b)
Figure 3: The general view of a) research report A” b)
research report “B” “Materials and methods” node.
4.2 Structuring of the Scientific Works
Using Ontologies
To present possibilities and systematization of the re-
search report, we have applied an ontological taxon-
omy for students’ works A” and “B”. The general
view of the obtained graphs is shown in figure 3 (Ve-
lychko et al., 2017).
A separate node called Abstract” has been cre-
ated, which contains all the necessary metadata of
the work, such as “Object of the study”, “Subject
of study”, “The aim of the study”, “Practical value”,
“Scientific novelty”, “Keywords” and “Hypothesis of
scientific works” in the form of the attributes. All
metadata has been used to provide filtering and rank-
ing.
The “Materials and methods” node, which con-
tains all the materials, was used to perform the ex-
periments. Every approach has been divided into the
separate attribute of the node. This allows concen-
trating the reader’s attention, and it helps to process
the data with each other. For further researchers, this
mechanism will be described in detail. The general
view of both works’ “Material and Methods” node is
shown in Figure 3 (Velychko et al., 2017).
For each ontological node that duplicates sections
of the research report, and that contain specific indi-
cators after analysing, additional separate leaf nodes
with these results have been created.
In this leaf node, all the issues are held in the form
of semantic and numeric data. These results are auto-
matically available for filtering, auditing and ranking.
An example of this leaf node is shown in Figure 4.
Figure 4: An example of leaf node with indicators after an-
alyzing.
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
135
Table 4: Examples of the usage of the educational research element in ontology.
Element
of the ed-
ucational
research
Example The role of the node in
the resulting graph
Using of the data
Title Node: “Development a method for
utilization of anaerobic digestion
effluent”
Parent node Used only for structuration
Object Node: Abstract
Class: Object
(object is only one per report)
Value: Anaerobic digestion;
Value: Microalgae’s growth
Value: Disposal of the waste
Located in Abstract
node; each object pre-
sented as attribute
Used for the audit; to provide
literature review; to link reports
for each other with same data; to
identify novelty and plagiarism
Subject Node: Abstract
Class: Subject
Value: The processing of anaero-
bic digestion effluent into humates
by the autocatalysis method
Located in Abstract
node; each object pre-
sented as attribute
Same as previous
Hypothesis Node: Abstract
Class: Hypothesis
Value: Effluent obtained after
anaerobic digestion can be used as
a nutrient medium for microalgae
Chlorella Vulgaris
Located in Abstract
node; each object pre-
sented as attribute
Same as previous
Keywords Node: Abstract
Class: Keywords
Value1: Biogas;
Value2: Anaerobic digestion
Value3: Microalgae
Located in Abstract
node; each object pre-
sented as attribute
Same as previous
Sections, Ab-
stract, Intro-
duction
Node: Introduction;
Class1: Text;
Value1: text itself;
Class2: Biogas production in liter-
ature, ml/g of VS;
Value2: 368;
Class3: methane content, % ;
Value3: 59
Each section presented
in separated nodes; all
text is presented in sep-
arate class of metadata,
based on type of data
Used for representing of the
main text of the educational re-
ports; structuration and naviga-
tion
Materials
and methods
Node: Materials and methods
Class1: Method1;
Value1: Desorption1;
Class2: Method2;
Value2: Desorption2
Located single node;
each method is separated
class of metadata
Used to provide links between
the reports used same method
by indexing and search
Concrete
results and
parameters
of the re-
search
Node: Results
Class1: pH;
Value1: 7.3;
Class2: Decomposition, %;
Value2: 87
Located a in separate
node; each parameter is
separated class of meta-
data
Used for the creation of the sin-
gle ranking tool to systemize re-
sults from same field
Economic
data
Node:Economic data Class: Pay-
back period, years;
Value: 5.3
Located the separate
node; payback period
presented in metadata
Used to provide comparison of
the approaches to assess invest-
ment attractiveness
References Node: Li et al. 2018, Chen 2003,
Sergienko et al. 2016
Each report (paper) lo-
cated in separate node
Used to link reports used same
reference with each other
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
136
5 INFORMATION PROCESSING
OF THE RESEARCH REPORT
USING POLYHEDRON TOOLS
5.1 Using an Audit Tool to Test a
Hypothesis
The audit tool (Stryzhak et al., 2014; Globa et al.,
2015, 2019) can be used to compare the hypotheses,
subjects, objects of research, keywords, and other pa-
rameters of the research reports. To demonstrate the
capabilities of the audit tool, the focus is on auditing
only hypotheses. A” model version of the “standard”
ontology has been created, which contains metadata
from the Abstract” node of the research reports A”
ontological graph. This ontology had a simple struc-
ture without branches, with the parent node being
named Abstract”. The child nodes duplicate meta-
data from the Abstract” node of the research reports
A”.
The “comparison” ontology has been created with
the child nodes, which contain the following hypoth-
esis: the effluent obtained after anaerobic digestion
can be used as a nutrient medium for microalgae Spir-
ulina Platensis (hypothesis 1), and the effluent ob-
tained after anaerobic digestion can be used as a nu-
trient medium for microalgae Chlorella Vulgaris (hy-
pothesis 2), the effluent obtained after anaerobic di-
gestion cannot use it as a nutrient medium for mi-
croalgae Chlorella Vulgaris (hypothesis 3). The hy-
pothesis 2 node also contains some metadata. This
ontology also had a simple structure without branches
with the parent node, the “Hypothesis test system”.
The general view of the obtained ontology of the com-
parison and the ontology of the standard in taxonomic
form is shown in figure 5.
The system has checked whether the hypothesis is
true or false by using the audit function. Those indi-
cators which do not correspond to the standard have
been colored red. Thus, this solution will allow to
test the idea of these scientific works and check other
metadata that have already been set by using informa-
tion from the “Abstract” node (figure 5b).
5.2 Analysing of the Research Reports
Result on the Practice Value
Research report A” and research report “B” have
been compared with each other by the following cri-
teria “Short-term economic perspective”, “Long-term
economic prospects”. According to section 2 of the
research report A”, the payback period of project A”
is five years, which corresponds to 6 points according
(a)
(b)
Figure 5: General view of in the taxonomic form the on-
tology of the comparing” (a) and (b) the ontology of the
“standard”.
to the criterion “Economic attractiveness”. This pa-
rameter is better for the project described in report
“B” with a payback period of four years and three
months, which corresponds to 5 points on “Economic
attractiveness”. The system provides raking of the re-
sults. If there is a large amount of data, the instrument
will be helpful to quickly and effectively evaluate the
projects on “Economic attractiveness”. Besides, in
further research, the other criteria will be justified and
used to provide data management on the educational
research, which will make the tool more functional.
5.3 The Role of Taxonomies of
Educational Studies in Centralized
Informational Web-Oriented
Educational Environment
5.3.1 Mathematical Interoperation of
Integration of Taxonomies of Educational
Studies in Centralized Informational
Web-Oriented Educational Environment
As it was shown before, the preleaf nodes (L4) are
terms (main ontology elements) that are very promis-
ing to use in terms of interoperability with other on-
tologies of subject areas, for example, with educa-
tional programs that in that term will be the addi-
tional instrument for Centralized informational web-
oriented educational environment.
So, such connection with the centralized informa-
tional web-oriented educational environment concept
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
137
Figure 6: General view of the audit results in the “Hypothesis test system” ontology.
Figure 7: General view of the ranking result.
and ensuring interdisciplinarity is described by for-
mulas. Each ontology is based on the conceptualiza-
tion of terms. It means that each ontology is described
as a tuple (cortege) of terms from the field it contains:
O
i
=< t
i
> (9)
So, we can describe ontology of educational pro-
gram, ontology of equipment that being used, ontol-
ogy of method and ontology of educational studies as
further:
O
1
= t
1
,t
2
,t
3
,t
4
,t
5
(10)
O
2
= t
1
,t
3
,t
5
,t
6
(11)
O
3
= t
3
,t
5
,t
6
,t
7
(12)
O
4
= t
1
,t
3
,t
8
,t
9
,t
10
,t
11
,t
12
(13)
As seen for equations, some ontologies have
cross-terms that will provide inoperability with CI-
WOEE and interdisciplinary. The terms that are
cross-terms will be used by the user to transfer from
elements (nodes) of one ontology to aspects of an-
other. For this example, leaf or sub-leaf (in the case of
educational studies’ ontology; such as specific meth-
ods, keywords, objects, etc.), t
1
, t
3
, and t
5
are cross-
terms:
t
1
O
1
, O
2
, O
4
(14)
t
3
O
1
, O
2
, O
3
, O
4
(15)
t
5
O
1
, O
2
, O
3
(16)
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
138
Figure 8: Terms of studies that may be used to link ontology of scientific studies with ontology of educational programs.
Figure 9: The general view of educational programs’ ontology related to chemistry educational programs in Ukraine and
terms that may be used to link with ontology of scientific studies.
The Taxonomies of Educational and Scientific Studies Role in Centralized Informational Web-Oriented Educational Environment
139
Figure 10: Using of same terms to provide interoperability between educational programs ontology and scientific studies
ontologies.
Figure 11: Workflow diagram of the creation of structured ontologies on scientific reports and their processing.
5.3.2 Practical Application of Ontology-Based
Integration of Scientific Studies
Educational Programs of Centralized
Informational Web-Oriented Educational
Environment
As shown in equations 10-13, the terms of scientific
study ontology, such as specific methods, keywords,
objects, etc., are used to provide a link with terms of
educational programs. Terms of studies that may be
used to link the ontology of scientific studies with the
ontology of educational programs are shown in fig-
ure 8.
A similar situation is also related to educational
programs. There is an ontology that systemizes the
data on the knowledge field related to chemistry us-
ing schools’ educational programs. It also consists of
terms that are presented in the form of nodes. The
general view of academic programs’ ontology related
to chemistry educational programs in Ukraine and
phrases that may be used to link with the ontology
of scientific studies is shown in figure 9.
Therefore, some terms may be related to both edu-
cational programs and scientific studies ontologies. In
this case, such links allow using subnodes (keywords,
methods, etc.) to find scientific studies related to this
term. The exact words to provide interoperability be-
tween educational programs ontology and scientific
studies ontologies are shown in figure 10. As can be
seen, the terms “methane” and “biogas” are related to
both educational programs and scientific studies and,
therefore, they are used to link these ontologies.
6 DISCUSSION
The proposed database follows the “Leiden Mani-
festo of Scientometrics. In the obtained ontological
database, quantitative evaluation can be supported by
AET 2021 - Myroslav I. Zhaldak Symposium on Advances in Educational Technology
140
qualitative expert assessment. Additionally, this on-
tological database can unite the research missions of
the institution, group, or researcher and protect excel-
lence in internally relevant research. The ontological
form of research reports can keep data collection and
analytical processes open, transparent, and straight-
forward. Because all metadata is contained in a sep-
arate node that can be expanded and supplemented.
Thus, the obtained ontological database can also ac-
count for variations, e.g., in publication and citation
practices. It can provide a base assessment of individ-
ual researchers’ qualitative judgment of their portfo-
lios. Because all ontological graphs are validated by
experts, in this way, it is possible to avoid misplaced
concreteness, including false precision, and recognize
the systemic effects of all assessments and indicators.
In addition, indicators can be scrutinized regularly
and updated in the obtained ontological database.
Furthermore, the proposed ontology-based research
reports can be integrated into a single environment –
ontology repositories, as suggested before (Paschke
and Sch
¨
afermeier, 2018).
The process starts with paper creation. For this
stage, we can use various text editors, for example,
word or google Docs. Then expert or author of the
paper will formulate metadata, which is necessary for
the ontology. For this purpose, the author will use
Microsoft Excel or Google Sheets. Then, an editor
needs to add information to the graph. In our case,
the IT Platform Polyhedron is used for this. And last
but not least, it is possible to use the Alternative”
system, which includes Audit, Filtering, and Ranking
instruments. All proposed tools are illustrated in the
workflow diagram below.
It is worth mentioning that this methodology of
the centralized information web-oriented educational
environment of Ukraine has been developed, and with
ontological approach is more systematic now. Educa-
tional programs are essential to the world picture that
is given to people during education, so they contain
all basic terms that may be used to systemize other
fields of human activities, including scientific studies.
Like researchers, pupils interested in terms can also
use such specific term nodes to continue their study-
ing by investigating the studies conducted.
7 CONCLUSIONS
An ontological approach to scientific work systemati-
zation has been proposed, assuring compatibility. A
system for arranging research reports based on digital
taxonomies (ontologies) has been created. It allows
users to construct node hierarchies utilizing the natu-
ral structure of the reports. Concrete parameters were
added to the nodes as metadata (semantic, numeric,
images, and links) to enable Polyhedron tools pro-
cessing. Ranging and filtering were employed to han-
dle semantic and numerical metadata. The obtained
results allow for interchange across various study re-
ports (including educational). The “Leiden Manifesto
of Scientometrics” is the acknowledged ontological
method.
Further study will improve interoperability across
research works by developing a single taxonomy that
provides hierarchization using the same methodolo-
gies, literature, and report findings and its process-
ing using both methods suggested in the research and
newly developed ones.
For the first time, it presents the concept of in-
tegration of scientific studies ontologies with educa-
tional programs that make them more usable for both
students and young researchers. The proposed ap-
proach aligns with the centralized informational web-
oriented educational environment concept.
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