Public Health Research on Night Tourism of Tourist Destinations
Based on Big Data: Takes the Ancient City of Lijiang as an Example
Wenjin Chen and Qianwen Kan
*
Zhejiang Gongshang University, Hangzhou, Zhejiang, China
Keywords: Public Health, Big Data, Night Travel, Lijiang Ancient City.
Abstract: With the continuous development of China's tourism industry, the forms of tourism are also gradually
diversified, among them, night tourism has become a widely popular way for tourists to travel. Compared
with daytime travel, night travel has a more sense of atmosphere, but due to the dim light at night, it is easy
to cause problems such as walking on air and stampede due to dense crowds. At the same time, due to the
epidemic, night travel also increases the difficulty of managing tourists. Therefore, the study of night
tourism helps to understand the trend of tourists' night tourism, and then maintain the public health of
destinations and tourists. This article in the ancient city of Lijiang as the research object, through data crawl
software to collect a certain time tourists comments on ctrip comments, and through the emotion analysis
and content analysis method to tourists in the ancient city of Lijiang at night travel location preference is
analyzed, and by strengthening the management of these sites to the maintenance of the ancient city of
Lijiang public health. The study found that: first, through high-frequency word analysis, experience
projects, ancient buildings and beautiful scenery can better attract tourists; second, through the emotional
analysis of tourists, a strong sense of atmosphere can more resonate with tourists, thus causing tourists to
gather.
1 INTRODUCTION
As a part of tourism, night tourism fills the time
vacancy of carrying out tourism activities, and also
promotes the rapid development of night economy,
which is an important form to realize the
development of China's tourism in China. With the
active support of the government, night tourism has
become a new way of tourism. In the study of night
travel, influenced by the regional, economic and
cultural factors, domestic and foreign for night
tourism research differences, night travel has not
been great attention by foreign scholars, related
research is less, Bromley scholars first found in
199424 hours city has become the focus of many
leisure and housing development (Bromley, 1994).
The Lemelin's field surveys of insect tourist
destinations have found that firefly travel is very
popular overnight in Mexico (Lemelin, 2021). The
above two scholars all found that night tourism can
effectively drive the development of the local night
economy, and showed a positive attitude towards
promoting night tourism. At the beginning of this
century, some scholars in China carried out relevant
research on night tourism, but they only stayed at
the theoretical level. After night tourism was
constantly praised by tourists, more scholars carried
out various research and analysis on night tourism.
Dai Bin believes that the development of night
tourism can give new forms of tourism and bring
new junction points for the integration of culture and
tourism (Dai, 2019). From the perspective of the
integration of cultural and tourism, Liu Yinjiang
studies how the night tourism can drive the
development of the cultural and tourism industry
and then promote the development of the economy
(Liu, 2019).
While night travel is increasingly popular with
tourists, it also has some problems endangering
public health. Due to the depth of the night, night
tourism will bring a sense of mystery to the tourist
destination. When tourists visit tourist destination at
night, they will get a completely different viewing
experience from during the day, but the night will
also bring restrictions to the vision of tourists at
night, making it prone to events harmful to their
own health during the tour. At the same time,
760
Chen, W. and Kan, Q.
Public Health Research on Night Tourism of Tourist Destinations Based on Big Data: Takes the Ancient City of Lijiang as an Example.
DOI: 10.5220/0012043700003620
In Proceedings of the 4th International Conference on Economic Management and Model Engineering (ICEMME 2022), pages 760-765
ISBN: 978-989-758-636-1
Copyright
c
2023 by SCITEPRESS Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)
because the epidemic control requires scanning the
code and registration of tourists, it is easy for
tourists to directly enter the sightseeing places while
the managers do not pay attention. The large number
of tourists is not conducive to epidemic prevention
and control, and is prone to stampede, which
endangers public health. We can also start from the
emotional preferences of tourists to analyze the
unpleasant things encountered by tourists during
sightseeing, so as to prevent and control the places
prone to accidents. Many scholars have analyzed the
tourist destination from the perspective of tourists'
emotions. Taking Hong Kong Ocean Park as an
example, Huang Xiaoting studied the process of
tourism emotional experience quantitatively, and put
forward the concept of "tourism emotional path"
(Huang, 2015). Liu Yi and others analyzed the
emotional differences between Chinese tourists and
international tourists based on the evaluation data
released on three domestic tourism websites (Liu,
2017).
This paper takes Ctrip as the sample data
acquisition object, and takes the ancient city of
Lijiang as the case place, and analyzes preference
for sightseeing of the tourists participating in the
ancient city of Lijiang through data mining and data
analysis, so as to provide guidance for maintaining
the public health and safety of night tourism. First,
the octopus crawler software was used to climb the
comment data published on Ctrip, and then the data
text was analyzed through ROST CM6.0. Finally,
and preference for sightseeing of night tourists were
summarized, so as to enrich the research scope of
night tourism and promote the public health and
safety of tourist destinations.
2 STUDY DESIGN
2.1 Case Sites and Their Data Sources
The old city of Lijiang has achieved good results in
the development of night economy, so this paper
selects the old city of Lijiang as a case site. In 2021,
the list of the First Batch of National Night Culture
and Tourism Consumption Cluster Areas published
by the Ministry of Culture and Tourism plans to
focus on the development of night economy in 120
projects, and the ancient city of Lijiang is among
them. In the ancient city of Lijiang, the night tour is
not a new concept. Night tour products such as
bonfire jumping, river lights praying and a bar street
have long existed for many years. In recent years,
Lijiang ancient Town scenic spot and from the
supply side and the demand side of the two ends to
work together, innovate night tour, night
entertainment, night market, night shopping and
other diversified business forms, the 31 entrances
and exits of the ancient city scenic area are open 24
hours a year round, on the basis of the night scenery
of the traditional heritage buildings, Add the Mufu
Museum, Yanhe Tea and horse theme park, Sakura
Square and other regional night view lighting belt,
attract the "eyes" of tourists with distinctive scenes;
at the same time, encourage the catering culture and
entertainment operators to delay the operation,
create the theme landscape night scene boutique
catering, script kills immersive experience home
stay, Such as the Lijiang Ancient Town Folk Music
Festival, "Love in Lijiang Chinese Tanabata Love
Poetry Festival", street art performance, reading
club, music salon and other night cultural activities,
catch the hearts of tourists with an aftertaste
experience, let the ancient city of Lijiang night tour
products supply more diversified, The types of
products are even richer.
Ctrip travel can obtain rich data, so this paper
selects Ctrip as the source of data mining. Ctrip is a
platform that provides accommodation,
transportation and other services, with hundreds of
millions of users, which means that it is rich in big
data information. As a leading comprehensive travel
service company in China, Ctrip has successfully
integrated the high-tech industry with the traditional
tourism industry, providing a full range of travel
services to more than 141 million members.
Considering the richness and openness of the
platform data, this study selected Ctrip as the data
acquisition platform.
2.2 Research Technique
In the analysis of tourists' preference for visiting
places, the emotion analysis method and the content
analysis method are mainly used. First of all, the
selected case in this paper is the ancient city of
Lijiang, data source is ctrip, ctrip tourists tour
Lijiang ancient city of comments as a data sample,
and octopus crawler software data crawl, in order to
get the most accurate information, the data
collection time for January 2020 to January 2022,
after screening the invalid comments and irrelevant
comments, finally extract 325 valid comments,
collected the total number of about 26000 words,
and save it as txt documents for the next step.
Secondly, with the help of ROST CM6.0 software,
the document data previously saved in txt format is
frequently analyzed, and the analysis results are
Public Health Research on Night Tourism of Tourist Destinations Based on Big Data: Takes the Ancient City of Lijiang as an Example
761
mainly presented in the form of word cloud map and
semantic network graph. Finally, the ROST CM6.0
software was used to analyze the network text data
for emotions, and the emotions were divided into
three emotion types: positive, neutral, and negative
emotions. Therefore, according to the mined data
text, this paper conducts Word Cloud word and
cloud map analysis, semantic network analysis and
emotion analysis, and summarizes these analysis
results, and then puts forward relevant suggestions,
so as to analyze the influence of tourists' tour
preferences, and provide effective guidance for the
development of night tourism and the maintenance
of public health in the ancient city of Lijiang.
3 INTERPRETATION RESULT
The mined text data is analyzed by high-frequency
word and cloud map analysis, semantic network
analysis and emotion analysis, so as to seek the tour
preferences of tourists during the night tour.
3.1 Word Cloud Analysis
Make full use of Word Cloud word cloud map
analysis to extract text keywords from 325 data
collected. First of all, the octopus extraction about
tourists in Lijiang night tour 325 valid comments
with ROST CM6.0 word processing and word
frequency analysis, in order to make the results more
meaningful, and the "night", "Lijiang" and other
high frequency word, at the same time, the other
unrelated cities such as "Shanghai", "Beijing",
"Guangzhou" to all, after the above operation, meet
the requirements of the top 30 high frequency word
extracted, and form Word Cloud word cloud graph,
extraction results as shown in Figure 1.
High-frequency words can directly reflect the
network image of the ancient city of Lijiang and the
main location of tourists' night tour. According to
the results of Figure 1, the "one bar street" appears
the most frequently, reflecting that the bar is the
project that tourists want to experience most when
coming to the night tour. The ancient city of Lijiang
should strengthen the management on this street,
and take timely measures such as diversion and flow
restriction when the crowd is dense. At the same
time, "square street", "wood", "wood", "the" five
phoenix building "," snow mountain academy ","
antique "these building frequency is second only to"
bar street ", this shows that the ancient buildings is
tourists often go to sightseeing, buildings with local
characteristics can attract tourists to experience and
stop, the ancient city of Lijiang can be in these
places to strengthen management. Also can be seen
from the figure "alley", "wooden" house ","
five-arched "," shop "," wall " attractions such as
distinctive frequency is higher, combined with the
previous frequency appears higher vocabulary can
be seen, can bring visitors experience or bring
visitors more novel location can attract tourists, and
some performing arts products received less
attention from tourists. In addition, we can get from
the "wonderful", "beautiful", "gorgeous", "enjoy"
describe the emotional words seen in the form of
night tour of Lijiang, make the tourist body and
mind by great pleasure, tourists' mood is mainly
positive mood, it shows that tourists travel at night
basic not meet affect the mood of events, the ancient
city of Lijiang public health management in place.
To sum up, it can be seen from the
high-frequency vocabulary that the ancient city of
Lijiang attracts tourists more about experience
projects and novel places, which can bring positive
emotions to tourists. It can be seen that night
tourism, as a new mode of tourism, has a fixed
scenery for tourists to enjoy, and the probability of
the occurrence of harm to to public health events is
almost zero.
Figure 1: Word cloud map of effective high-frequency
words.
3.2 Semantic Network Analysis
Semantic network analysis is a kind of high
frequency word as nodes, with high frequency word
combination common times for the relationship
between nodes, and then by building semantic
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network graph analysis of high frequency phrase
semantic method in the text, through semantic
network analysis can be more intuitive
understanding of tourists emotional cognition of the
ancient city of Lijiang, clear interaction between
high frequency words. In the semantic network
analysis, the 325 valid comments of tourists
attending the night tour of Lijiang Ancient City were
processed and analyzed by ROST CM6.0, and the
results are shown in Figure 2.
Figure 2: 325 valid comments semantic network diagram.
According to the results of Figure 2, the semantic
network presents a multicenter structure and is
dispersed into different networks. From the figure,
we can clearly see that "The Old Town of Lijiang"
and "night tour" are the core nodes, which are the
first-level words, and which are the key words in
these data, which is in line with the research object of
this paper. "Bar street" for the secondary vocabulary,
and the most closely related is the "experience",
"comfortable", "light", "song", reflects the bar
gorgeous lights and playing songs will attract tourists
to stop, and got the recognition of most tourists,
therefore, to strengthen the control of the bar street
helps to maintain public health, prevent the
occurrence of harm to to public health events. At the
same time, with the "wall" is "flower" most closely
"photo", "scenery" and "beautiful", which reflects the
tourists to flower wall motivation and purpose, you
can see that the ancient city beauty for tourists has a
strong attraction, therefore, the ancient city should be
in such attractions protective measures, and to
remind tourists slogan, prevent tourists because of
photos and step empty, trample and other hazards to
their own health events. And "Sifang Street",
"Wooden Street" and other buildings are also loved
by tourists because of their strong sense of history.
From here, we can see that the architecture,
recreation methods and beautiful scenery in the
ancient city of Lijiang are deeply loved by tourists.
In addition, "snack", "specialty" and other peripheral
words also just show that the food in the ancient city
will also bring a good sense of experience to tourists,
and the ancient city should also strengthen the
management of food health in the city.
To sum up, bars, ancient buildings and punching
points are the most popular places for tourists, and
the semantic network map is mainly positive or
neutral words, which express the tourists' overall
emotional cognition of the ancient city of Lijiang
during the night tour, indicating that the
management of the ancient city is in place, and there
are no incidents endangering public security.
3.3 Sentiment Analysis
Through emotional analysis, we can know the
Public Health Research on Night Tourism of Tourist Destinations Based on Big Data: Takes the Ancient City of Lijiang as an Example
763
emotional state of tourists during the night tour of
the ancient city of Lijiang. Using ROST CM6.0 for
tourists to participate in the ancient city of Lijiang
night tour of article 325 valid comments emotional
value calculation, then, according to the emotional
value of Lijiang when emotional state, when the
emotional value is positive, said tourists night tour
of Lijiang is with positive emotions, when the
emotional value is negative, said tourists night tour
of Lijiang is with negative emotions, when the
emotional value is 0 said tourists night tour of the
ancient city of Lijiang is with a neutral mood. The
results obtained are shown in Tables 1 and Table 2.
Table 1: Statistical results of emotional tendencies.
Emotional tendenc
y
Qt
y
(
article
)
Percenta
g
e
Positive moo
d
217 66.8%
Neutral moo
d
39 12%
Ne
g
ative emotions 69 21.2%
Amount to 325 100%
Table 2: Statistical mental results for positive and negative emotion.
Positive moo
d
Negative emotions
Level Qty P
P
Level Qty P
P
General (0-10) 87 26.7% General (0-10) 49 15.1%
Moderate degree
(10-20)
69 21.2% Moderate
degree (10-20)
19 5.8%
Height (above 20) 61 18.9% Height (above
20)
1 0.3%
Amount to 217 66.8% Amount to 69 21.2%
According to the statistical results of emotional
tendency in Table 1, there are 217 articles, neutral
emotions and 69 articles of positive emotions, 39
articles of the tourists, accounting for 66.8%, 12%
and 21.2% of the valid comments, respectively. The
tourists are mainly positive when visiting the ancient
city of Lijiang. According to this result can get
tourists in the ancient city of Lijiang night is mainly
positive mood, this is due to the ancient city of good
experience project to meet the expectation of night
tour, bring tourists positive emotional cognition, and
tourists did not harm their own health events, shows
the ancient city management in place.
The statistical analysis of table 2 is respectively
in the positive emotions and negative mood related
comments, and table 2 of positive and negative
emotions segment statistical results show that
tourists in the ancient city of Lijiang is general,
moderate and high number of 87,69 and 61,
respectively, the percentage of 26.7%, 21.2% and
18.9%, respectively, overall the number of the three
degrees is little difference. According to this result,
we can get tourists' positive emotions during the
night tour of the ancient city of Lijiang. Since the
main tourist points are bars, ancient buildings and
artificial punching points, tourists can also have a
good emotional cognition of these places. When
tourists visit the ancient city of Lijiang, 49,19 and 1
were general, moderate and high, respectively,
accounting for 15.1%, 5.8% and 0.3%, respectively.
Overall, the number of general negative emotions,
the number of moderate negative emotions and the
number of high negative emotions vary greatly.
According to this result, it can be found that very
few tourists show extreme dissatisfaction with the
ancient city of Lijiang, and most tourists on the
negative feelings of the old city of Lijiang only stay
in a slight dissatisfaction. The analysis of tourist
comments on negative emotions found that the main
sources of negative emotions were expensive prices,
food quality, and unmaintained scenic spots.
To sum up, tourists are generally positive about
the ancient city, which shows that the ancient city is
in place and adequate measures have been taken to
maintain the public health in the ancient city; the
analysis of negative tourists shows that the ancient
city should also be improved in terms of food safety
and infrastructure maintenance.
4 CONCLUSIONS AND
RECOMMENDATIONS
In order to study the public health of the ancient city
of Lijiang, after the above data mining, processing
and analysis, the following conclusions and related
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764
suggestions are drawn: First, through the
high-frequency word analysis, there are three main
attractions in the ancient city: experience projects,
ancient buildings and beautiful scenery. Most
tourists will go to the bar, tourists will go to flower
wall, square street, sightseeing, therefore, the
management of the ancient city should be inclined to
these places, should arrange staff at these points, and
timely respond to the traffic attractions diversion,
traffic limit measures, prevent stampede, to protect
the life and health of tourists; second, the strong
sense of atmosphere point can cause tourists to
gather. The comment text data on Ctrip is the real
evaluation of the tourists after a night tour of the
ancient city, which can more intuitively reflect the
tourists' emotional cognition of the ancient city, and
will also make other tourists happy to go. Therefore,
the ancient city in the construction of relevant scenic
spots, should also do a good job of emergency plans,
such as improving emergency lighting equipment.
Third, generally speaking, the safety protection
measures in the ancient city are done well, but food
safety and scenic spot facilities are still the main
reasons of endangering public health. For the
tourists who travel at night, the lights can not fully
cover all the scenic spots. When the facilities in the
scenic spots are in trouble, the tourists are
vulnerable to injury. At the same time, when the
flow of people is too large, it will harm the public
health. When food safety problems can threaten the
health of tourists. Therefore, the ancient city should
strengthen the management of these two aspects.
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