1. Introduction
Waterfront refers to the land or buildings adjacent to rivers, lakes, and oceans in a city, specifically the part of the town adjacent to the water body [
1]. Waterfront is defined as an area of water interaction between urban development and the needs of the city and its residents, and is considered an essential part of the urban public space system [
2,
3]. The open waterfront space between the land and the water can enhance the accessibility and intimacy between people and nature [
4]. A waterfront functions similarly to a park, but it has unique charm [
4]. In the modern development of Chinese towns, the rapid development of cities caused the destruction of various waterfront areas [
5,
6]. Subsequent waterfront development often causes social, economic, and environmental problems [
7,
8,
9,
10,
11]. Thus, since the 1980s, waterfront areas have become the focus of intensified planning intervention and urban renewal [
3]. Urban waterfront is currently one of the most sensitive areas in urban ecological environment and lifestyle [
12]. In recent years, researchers have come to realize the need to protect green sanctuaries because of numerous unhealthy living conditions in cities [
13,
14,
15,
16,
17,
18,
19,
20].
Emotion is a complex multidimensional feature, which reflects people’s personality and behavioral characteristics [
21]. People use various forms of communication to convey their emotions to others [
21]. Most of the early studies have collected data through social surveys, which have a limited sample size and long research timeline [
22,
23]. However, given the development of science and technology, people began to share their opinions and observations, including their emotions, through different types of social media [
24,
25]. Social media data samples are rich and timely, and they can also be used to track users’ movements [
26,
27]. Attempts to apply new technologies to make the thinking and practice of urban planning more scientific have been going on since the last century [
28,
29,
30,
31]. Recent studies have also explored the feasibility of using social media data to study health issues, revealing the value of social networks in mental health research [
32,
33,
34]. Given the advancement of technology and social networks, social media can provide more diverse data (e.g., text, images, audio, and video). Text is still the most common form of communication in social networks [
21]. Scholars have conducted detailed studies on the sentiment analysis in various forms of text, including the evolution of emotions, models, and detection methods [
35,
36,
37,
38,
39]. Different methods have also been proposed and applied in detailed investigations [
40,
41,
42,
43]. They proposed new perspectives to dig out rich information about psychology, emotion and perception, which is mostly based on computer analysis technology including deep learning, natural language processing and artificial intelligence assisted analysis.
The important influence of urban space on human cognition has been explored in the field of urban planning [
44,
45,
46,
47,
48]. Simultaneously, the interaction between cognition and emotion has become an important topic in the fields of biology and medicine [
49,
50,
51,
52,
53,
54]. Considerable research on urban public space and users’ emotional health is focused on parks and green areas, whereas only few studies have explored the relation between waterfront and human emotions [
55,
56,
57,
58]. Waterfront in a city plays an important role in public health. Specifically, waterfronts provide physical training opportunities that support and promote public health through communication opportunities for interaction, can improve mood and reduce an individual’s stress level and anxiety, and have a positive effect on mental health [
59,
60,
61,
62]. Urban space can affect citizens’ emotions, so it is very necessary to consider citizens’ emotional factors in urban planning and design as feedback [
63]. The design of cities requires cognition—mental processes that include planning, decision-making, problem-solving and learning. There is substantial experimental evidence that all of these processes have a large emotional component [
64,
65,
66].
At the same time, studies have shown that there are gender differences in human emotions. Specifically, women are more likely to be affected by mood disorders [
67,
68,
69]. Moreover, stronger emotion-specific physiological responses have been observed with women when processing different emotions [
70,
71]. By contrast, men have been observed to have better cognitive control over negative emotions [
72], and they are also likely to use cognitive control strategies to combat negative effects [
73]. Based on the above two points, it is valuable to analyze the gender difference of users’ emotions in urban public spaces such as waterfronts.
Emotional information of how people perceive their surroundings in the city can build a vital base for innovative urban planning. Taking Wuhan as an example, this paper provides a human-centered approach that combines textual emotion analysis with spatial analysis techniques based on based on big data of social media. This paper pays attention to gender differences and the public sentiment towards urban waterfront space, and provides suggestions for urban waterfront planning and development from the perspective of POI (Point of Interest). In GIS and internet electronic map, a POI can be a house, a shop, a post box, a bus stop, etc. The methodology used in our approach comprises four steps: (1) Using an expanded dictionary of emotions to analyze the emotional score of Weibo texts published by citizens in waterfront areas of 21 lakes in Wuhan City; (2) exploring the public emotion characteristics of different genders in the urban waterfront; (3) classifying the waterfront according to the emotional response (score) of the public of different genders; (4) exploring the relationship between different POI types and waterfront types based on linear regression and geographical weighted regression. In contrast to previous approaches, which have relied on methods from a single discipline like GIScience, computational linguistics (CL), sociology, or computer science (CS), we propose a trans-disciplinary method. This paper is structured as follows: After this introduction, the second part describes the basic natural and social background of the study area, the data content, and preprocessing process used in this study. The third part introduces the method of scoring the sentiment of Weibo texts in this study and the geographic weighted regression (GWR) and multiple linear regression methods used in the subsequent analyses. Results, discussions, and conclusion are presented in the next three sections.
5. Discussion
Research on analyzing emotions and public space through social media data is emerging in the context of other cities around the world. Lim et al. have explored the social media text sentiment in Melbourne’s green spaces [
87]. Richard A. Plunz et al. have explored the emotional state of social media texts in Central Park in New York City [
88]. Schwartz et al. have explored the negative emotions of social media users in San Francisco City Park by tracking the same users inside and outside the park [
89]. However, existing studies have focused on green spaces in urban areas, paid little attention to the waterfronts in cities, and used short research periods or small numbers of data sets. Our study takes Wuhan city as an example and puts forward a people-oriented approach and perspective. Combining multiple disciplines based on the public’s emotion towards the urban environment, this study proposes suggestions for the planning and development of urban waterfront space. The research results in Wuhan city demonstrate the feasibility of this approach. Besides, Wuhan is a metropolis with developed transportation and a dense population. There are many lakes and abundant water resources in the city. These representative characteristics enable the research results of Wuhan to be extended to similar cities.
This study has used iconic vocabulary and symbols to score emotions in Weibo text. However, this kind of tool cannot fully and accurately identify the emotions expressed by users. Future research can improve methods to accurately capture emotional goals and determine how people feel about various topics, people, events, places, and objects. Weibo users do not represent all actual waterfront tourists. Social media data using geolocation must not replace traditional survey methods, but can be regarded as a powerful complementary tool provided by modern technology. The accuracy of user positioning is limited by the GPS accuracy of mobile devices, and the nature of 2D geographic data may cause measurement errors when determining the actual location of the users. For example, a user may be in an underground subway station or sitting in a waterfront area.
Finally, the influence of gender on public emotion is discussed to focus on individual differences in the study. In fact, there are, however, many individual factors that affect the public’s emotional response to urban space, such as age, occupation, income and so on. We chose to study the gender difference, but the influence of other factors cannot be ignored. In the follow-up research, we will further improve our approach and idea to quantitatively explore the influence of other factors and the relationship between each factor. We hope that this kind of research will enable planners to focus on individual differences in the public and make urban planning more sophisticated and humane.
6. Conclusions
Recall that the main novel contributions of this paper are a new approach and perspective combining textual emotion analysis and spatial analysis based on big data of social media. Moreover, in this process, attention is paid to the gender difference in the public’s feelings towards urban space. The approach we provide consists of four steps: (1) Emotional ratings are given to microblog texts published by citizens in the study area; (2) exploring the emotional characteristics of the public of different genders in the urban waterfront; (3) classifying waterfront according to the emotional response of the public of different genders; (4) exploring the relationship between different types of POI and various types of waterfront, so as to make planning suggestions. The results can be used in the domain of urban planning for decision support and the evaluation of ongoing planning processes.
The study in Wuhan city proves the feasibility of the approach. The results show that there are differences in the score and spatial distribution of the public’s emotions in the waterfront space in Wuhan. And the distribution of POI is associated with this change in public sentiment. Taking Wuhan as an example, the preliminary proposal is to improve the environmental quality of lakes and balance the layout of POI. To be specific, to improve the positive emotions of men in Wuhan waterfront space, attention can be paid to the construction of culture facilities, while the reduction in the negative emotions of women can be started from the restaurant facilities. Spatially, the impact of each POI is different, and more targeted suggestions can be put forward. For example, for shopping facilities, the construction of shopping facilities on the southeast side of East Lake has a greater impact on public emotion, while the construction of shopping facilities on Tazi Lake has a smaller impact. In particular, in the surrounding areas of North Lake, West Lake, Machine Lake, Small South Lake, Houxiang River, Chestnut Lake and Sand Lake, the construction of shopping facilities is more likely to make women have emotion swings. These results of this study can be used for further discussion by urban planning managers and decision makers.
The innovation and uniqueness of our approach is fourfold: First, the concept improves previous research in that it proposes a trans-disciplinary approach combining methods from GIScience, CL and urban sociology by merging the concepts of semantic, geographic and gender difference. Second, using social media data provides the public emotions in near real time in an urban context. Social media data is continuous 24/7, which provides a conscious stream of information and a collective depiction of the social response to specific situations and environments [
84]. Therefore, contrary to the traditional practice of focusing on specific problems at specific timelines, social media data can be used as a tool to assist overall design decision-making and planning. These data also represent the users’ cognition. Thus, these data have helped the continuous progress in the understanding of human interaction with the environment. Third, our approach focuses on gender differences among the public. Focusing on individual differences among the public can help to identify the seemingly invisible urban problems. Moreover, this will provide support for the future development direction of more humanized and detailed urban planning. Fourth, unlike other research efforts, our approach offers direct feedback to real-world processes in urban management and planning, and will help to detect previously unseen urban patterns. Finally, this approach of combining textual emotion analysis with spatial techniques is generic so that it is usable in other areas like public health, traffic analysis and management, public safety, tourism, etc.