A Mental Health Management and Cognitive Behavior Analysis Model of College Students Using Multi-View Clustering Analysis Algorithm

In this new era that is full of social changes, ongoing economic transformation, an abundance of information resources, and a fast pace of life, the pressure that people feel to compete with one another is also increasing day by day. Because of the vast differences in people's states of consciousness and worldviews, interpersonal relationships have become increasingly difficult to navigate. Students in higher education institutions will eventually emerge as the dominant demographic in society. Their mental health has a significant bearing on all aspects of life, including learning and future growth. An objective condition that must be met in order to guarantee that the next generation of talent will have a high level of overall quality is the improvement of the mental health of college students (CSMH) in the new era. One component of public health is the emotional well-being of students in higher education. The state of the public's health is consistently ranked among the most urgent problems facing modern society. However, there is not much hope for the Chinese CSMH. In order to effectively manage their mental health, a variety of educational institutions, including colleges and universities, have proposed a large number of management strategies for CSMH. The vast majority of these strategies are not targeted, and they do not offer a variety of management strategies that are based on the many different psychological states. It is necessary to first be able to accurately predict the mental health status of each individual college student in order to achieve the goal of improving the mental health management of students attending colleges and universities. This study proposes using a multi-view K-means algorithm, abbreviated as MvK-means, to analyze the CSMH's data on mental health. This is possible because the data can be obtained from multiple perspectives. This paper presents a multi-view strategy as well as a weight strategy in light of the fact that each point of view contributes in its own unique way. Different weight values should be assigned to each view's data, which will ultimately result in an improved evaluation effect of the model. The findings of the experiments indicate that the model that was proposed has a beneficial impact on the analysis of the data pertaining to the mental health of college students.


Introduction
Students have a unique opportunity to shine on the college stage. College students have reached a point where their physical development is comparable to that of adults, but their mental health has not reached this level of development yet. e atmosphere that the students have been exposed to up to this point has been one that is comparable to the actual social atmosphere. When college students are forced to balance the demands of school, life, and work, their mentalities will shift in a variety of different ways. A number of psychological issues could arise if the various pressures the students are subjected to are not alleviated in a timely and appropriate manner. If these issues are not resolved in a timely manner, it will lead to other psychological issues, which will interfere with the student's ability to study and function in daily life while in college as well as in the future. Students at a wide variety of colleges and universities have been involved in a disturbingly high number of cases of self-harm and suicide in recent years. Some students are unhappy as a result of a disagreement with a fellow student who resides in the same dorm or attends the same class, and finally, as a consequence of a few insignificant occurrences, there is a wounding incident. Some students are subjected to a variety of pressures, and because they are unable to concentrate on it for an extended period of time, they are at risk for committing suicide. All of these predicaments can be traced back to the mental health issues that are prevalent among college students. e psychological well-being of students in higher education falls under the umbrella of the field of public health. Because both the nation as a whole and each individual family must invest a significant amount of time and resources to educate a college student, it would be a terrible waste if something were to happen to him or her before he or she could integrate into society and appreciate the significance of his or her own life. e problems with CSMH have now become a public health concern. As a result of this, it is clear that educational institutions, such as colleges and universities, ought to pay attention to CSMH [1][2][3] and efficiently manage the data pertaining to the mental health of college students. Problems with mental health have a negative impact not only on the sound physical and mental development of individuals but also on the growth of the nation and society as a whole. As a consequence of this, one of the most important responsibilities of modern college education is to pay attention to and investigate the psychological state of college students, to promptly diagnose and treat any mental illnesses that may be present in college students, and to provide appropriate direction to college students so that they can overcome psychological barriers and treat mental illnesses. e research that is carried out on the mental health management of college students has the potential to enrich and improve the system that manages mental health. Countries from Europe and the Americas quickly established themselves as pioneers in the field of school mental health management as early as the eighteenth century. It is possible to attribute the rapid progress that has been made in the management of students' mental health in developed countries like the United States and Europe to the fact that the government in these countries is the primary driving force behind these advancements. On the other hand, both the connotation and the expansion of mental health management are extremely complex, and the research results frequently lack unity and the ability to be applied because they are based on hazy concepts. is is because the concepts on which they are based are not well understood. Due to the fact that the starting point for this research was so low, the research on the mental health management of Chinese college students got off to a very sluggish start in China. As a result, the country's research on the topic is far behind schedule. e content of the research has many instances of repetition, and the ideas and methods that were utilized in the research are not in a position to adequately reflect the robust scientific nature of the research. is, in turn, causes inconsistencies in the findings of the research. e majority of the research that is being done on the mental health management system of college students is research that is being done on the mental health services that are being provided to college students.
is is because the mental health management system of college students is the focus of the majority of the research that is being done. On the other hand, there is no research being done on the administration of college students' mental health from the point of view of public health. e scope of studies that are relevant is not overly broad, and the majority of the investigations are limited to relatively small samples. ese studies have not demonstrated a fundamental understanding of the development law and characteristics of CSMH, nor have they suggested any effective public health management measures to improve CSMH. In addition, these studies have not suggested any concrete actions that could be taken to improve CSMH. Researchers are required to comprehend the structure of mental health management from a variety of perspectives in order to support it with varying degrees of theoretical results. is is necessary because the structure of mental health management is so open. Investigation into this topic has the potential to contribute significantly to the theoretical underpinnings of open systems approaches to the management of mental health. Research in this area is very important due to the fact that the management of the mental health of college students is an important part of the system that manages public health. e research that is being done on the mental health management system of college students is helpful in the development of the mental health management system on a more local level. e idea of a management system for mental health can be segmented into a variety of different levels and organizational structures. Due to the wide variety of cultural settings in which various strategies for managing mental health first emerged, these strategies can take on a wide variety of forms across different cultures. As a direct consequence of this, the research topic of mental health management incorporates an important element of ethnic flavor. It is especially true for a country that is composed of more than one ethnic group with each ethnic group having its own culture, and this is true even more so for the country as a whole. In addition, research on the mental health management system in China is still in its infant stages, and the majority of the studies that have been carried out thus far are of a substandard quality. At this time, the majority of them continue to merely copy foreign theory and practical experience without making any attempts at innovation or transformation in order to produce a distinctive theoretical system that is able to accommodate their very own growth. is is the case despite the fact that there are numerous opportunities for them to develop their own unique perspectives and perspectives that are grounded in their own experiences. In light of this, research into community-based mental health care management in China can be of assistance in working toward the goal of establishing mental health management at the local level. e majority of CSMH's data collection is done through the use of questionnaires and the collection of physiological data. e traditional approach to managing mental health focuses primarily on the fundamental processes of adding new data, removing old data, and making modifications to existing data. A comprehensive data mining and analysis is not carried out using this method. As a result, it does not have much of an impact on the way CSMH is managed. It is essential to organize and analyze data regarding the mental health of students in order to realize improvements in the efficacy of mental health education provided in schools. e psychological data of college students can be mined in-depth using a variety of methods, such as classification algorithms [4][5][6], regression algorithms [7][8][9], the cluster analysis method [10][11][12], big data technology [13][14][15], and so on. ese techniques are able to perform an accurate analysis of the issues concerning the psychological information of the students. e potential and implicit information in the data can be obtained by relying on the platform of the psychological management system, which is combined with data mining technology. is allows for a large amount of data to be analyzed, which in turn helps obtain potential and implicit information.
is kind of implicit information will provide major universities with a corresponding reference basis and effective solutions. Wearable technology and social networking software are utilized in the data collection process for reference [16]. e information is then entered into a system that makes predictions about people's mental health, which allows for the prediction of the mental health of each individual student. e purpose of the research cited in reference [17] is to identify people who have psychological issues by conducting an analysis of social data using natural language processing methods and machine learning algorithms. Algorithms that are used in machine learning are utilized in reference [18] to identify mental health states and to make predictions regarding illness. Over 50 previous studies on the application of machine learning in mental health assessment were analyzed for this study. e author provides a summary of the current state of research on mental health that is based in machine learning techniques, using the studies mentioned above as support. Deep learning algorithms are used in reference [19] to mine the social data of individuals in order to determine the individuals' mental health status. e mental health state evaluation method that is based on the deep learning algorithm has the potential to have an accuracy of evaluation that is close to 90%. In reference [20], typical machine learning algorithms are utilized in the assessment of a person's mental health status, and the results of the assessments obtained by a variety of conventional machine learning algorithms are compared to one another. e primary focus of the research work that was described above is the examination of data pertaining to health that was obtained from various social networking platforms. ese data include some information that is either inaccurate or unqualified, both of which will have an effect on the final results of the mental health assessment. In addition, the majority of the studies referred to above conduct evaluations of psychological states by making use of professional evaluation tools, machine learning algorithms, and deep learning algorithms.
ere is room for advancement in terms of the accuracy of the evaluation that was obtained as a result of the method that was utilized. In light of the arguments that were presented earlier, the purpose of this paper was to propose a model for the management of the mental health of college students that is based on an algorithm for multi-view clustering. Specifically, the paper will discuss how this model will work. e following is an outline of the most important contributions made by this study: (1) When analyzing students' mental health, we use both the data on the students' basic information as well as the data from the questionnaires. (2) An algorithm called MvKmeans has been proposed with the intention of being used for the purpose of training a mental health management model. e default behavior of the traditional multi-view algorithm is to give equal weight to each view. is is one of the available settings. When dealing with real data, it is not appropriate to use this strategy, which presumes that each view has the same quality by default. is is due to the fact that the quality of the real data varying greatly from case to case. In light of this, a weighting strategy has been implemented in this piece of writing in order to effectively control the significance of each viewpoint. (3) Feed the collected data into the trained model in order to obtain information regarding the mental health status of college students who are enrolled in the educational institution. As a direct result of the information contained in this report, CSMH is being managed in an efficient manner. Experiments have shown that the model for the management of college students' mental health that is based on the multi-view clustering algorithm that is used in this paper is capable of producing better results. is paper utilizes the model.

College Students' Mental Health
Management from the Standpoint of Public Health

College Students' Mental Health Standards and
Management. e idea of mental health standards is presenting a dynamic development trend as a direct result of the progress that has been made in human society, the economy, and science. is is the case because the concept of mental health standards is presenting a dynamic development trend. e ten mental health standards that were proposed jointly by Maslow and Mittelman are among the standards that have the greatest amount of public recognition. e standards provide a comprehensive breakdown of the various aspects of security, such as an accurate assessment of one's own capabilities, the development of an ideal personality, the mastery of one's feelings, the enhancement of one's connections with others, and the promotion of personal development. "Physical, intellectual, and emotional mediation, adapting to one's environment, having a sense of well-being, giving full play to one's abilities at work, and living a productive life," was how the International Conference on Mental Hygiene defined mental health in 1946. At the time, this was considered to be the standard for mental health. Over the past few years, academics in China have increased the amount of research they have done on the CSMH and have proposed new standards for the CSMH. College students should have the following mental health standards, according to the general consensus among all students: correct three views; personality integrity; positive mood; positive and harmonious interpersonal relationships; objective self-evaluation; positive sense of competition; love of life; willingness to learn; and the courage to pursue life value. Defining the mental health standards that college students Computational Intelligence and Neuroscience 3 should achieve is the first and most important step toward improving the level of mental health management among college students. Management is the process of effectively planning, organizing, leading, and controlling the resources owned by an organization within a specific environment in order for the organization to achieve the goals that have been set for the organization.
ese goals have been set in order for the organization to be successful. e term "CSMH management" refers to the related plans that have been formulated by higher education management institutions and schools to improve the mental health status of college students and improve the mental health level of college students according to the current situation of CSMH. e goal of these plans is to both improve the mental health status of college students and improve the mental health level of college students. e mental health of college students is going to be prioritized in the implementation of these plans. We can establish a special management department to provide psychotherapy and management for these college students who have mental health issues. e content, personnel, mechanism, mode, and measures of mental health management are the primary focal points of investigation in the studies that are currently being conducted on the topic of the management of the mental health of Chinese college students. ese studies are being carried out in order to shed light on the topic of the management of the mental health of Chinese college students. ere are not many studies that concentrate on the particular objectives or staged objectives of management, regulatory means, or specific evaluations. erefore, the establishment of CSMH organization and management mechanism and the improvement of the relevant management system are issues that need to be accelerated in the academic circles. Also, these are questions that need to move much more quickly through the academic community. is study was conceived with the intention of both improving the mental health management system and bringing attention to the significant role that management plays within the mental health management system. e aforementioned circumstances served as the impetus for the development of this study.

e Principles of Mental Health Management of College
Students. An in-depth analysis and application of CSMH data serve as the bedrock of efficient CSMH management. After data on the mental health of college students have been collected through a variety of channels, an intelligent model is used to analyze the data and extract potentially informative information from the data in order to evaluate the psychological state of the students. e findings of the evaluation are incorporated into the development of intervention strategies for the treatment of mental health issues experienced by college students. is strategy has the potential to improve the effectiveness and efficiency with which universities manage their student bodies. Specifically, it has the potential to improve the effectiveness of universities. e following is an illustration of the principle for the management of the mental health of college students, which can be found in Figure 1: e CSMH management process is depicted as being a component of the data mining workflow in the figure. e entirety of the procedure is connected by five links, which are as follows: demand analysis, data collection, data sorting, modeling, and the results of data evaluation.
(1) e purpose of the stage of demand analysis is primarily to determine what useful information will be unearthed from the mental health data of college students during the course of this research. A welldefined objective serves as the foundation of demand analysis. e primary goal of this study was to gain a comprehensive understanding of college students' mental health status by analyzing data on college students' mental health. Students who may have psychological issues receive early warning, and professional psychological counselors will timely and effectively guide them according to the warning information they receive. After the objective has been defined, the necessity of this research can be summed up as the identification of psychological issues, either imminent or ongoing, that are present in college students. Once a diagnosis has been established, the appropriate medication can be prescribed based on the most successful approaches to the management of mental health. (2) e information data are the raw material, and because the raw material is of such high quality, the final product will also be of such high quality. As a result, the data collection process ought to be as exhaustive, in-depth, and precise as is humanly possible. For the purpose of collecting data on CSMH, it is possible to start with the fundamental information of the students, social data, psychological questionnaires, and so on. Collect data related to CSMH from a variety of perspectives in order to enrich the information collected. (3) Data sorting. In addition to the collection of raw data, preprocessing of that data is necessary. When it comes to the raw data that were collected, some of them are invalid data, some of them are incomplete data, and some of them are redundant data. e presence of these data will have a significant impact on the data mining process's outcome. As a result, the importance of organizing the data cannot be overstated. (4) Create an evaluation model. Models for data mining can be trained and created based on a selection of algorithms. A multi-view clustering algorithm was utilized for the purposes of this study. e execution steps of the algorithm consist of training a mental health assessment model using the training dataset. is model is then used to evaluate patients. (5) Result evaluation. e trained model is then given the test dataset to analyze, which allows the performance of the trained model to be evaluated. Calculated based on the evaluation index is the model's overall performance rating in terms of its evaluation. If the evaluation results are very positive, this indicates that the trained model is performing very well. e evaluation results that are produced by the model can provide college administrators with assistance in effectively managing college students.

Architecture of CSMH Management System.
A complete mental health management system for college students should have psychological evaluation center, evaluation management, counseling center, counseling management, public information, personal information, and other functions. Among them, the evaluation center has the functions of collecting test evaluation data, psychological evaluation, and evaluation record management. Evaluation management includes evaluation data management, combined evaluation management, and evaluation result management. e consultation center includes consultation message, online consultation, and appointment consultation. Consulting management includes appointment management, appointment scheduling, and message management. Public information includes viewing announcement information, mental health guide, public information management, and psychological article management. Personal information mainly includes registration, login, password retrieval, and personal information maintenance. Other functions mainly include file management and information management. Figure 2 depicts the system's architecture.

Classical K-Means Clustering Algorithm.
On all of the data, the K-means algorithm is used to perform distancebased clustering. e primary objective of this algorithm is to determine the cluster center points for each classification with as much specificity as is feasible. Assume there are k different categories and n total data points. Calculate the distance between each sample and each class center, then choose k data at random to serve as the initial cluster center, calculate the distance between each sample and each class center, and divide the remaining data into classes as close to the class center as possible. It is necessary to continuously calculate the distance between each sample and a new round of cluster centers throughout the entire process, which is an iterative update process. e more iterations that are performed, the better the cluster centers that are obtained, up until the point where the cluster centers are no longer variable, consequently gaining possession of the last available class center. Following the selection of the class center,  Figure 3 depicts the detailed steps of the K-means clustering model [21], which are as follows: e objective function of the K-means algorithm is as follows. e Euclidean distance is used in the function to calculate the distance between each data point and the cluster center.
where k is the number of categories in the dataset and n is the total number of samples in the dataset. d ij � ‖x i − z j ‖ is used to calculate the Euclidean distance. x i represents the ith sample and z j represents the jth class center. w ij represents the class to which the data point belongs.
If w ij is 1, it means that the jth data point belongs to the class S i . When w ij is 0, it means that the jth data point does not belong to the S i class.
Equation (1) translates to the following expression: where d2/ij represents the sum of the squared errors of the data points and the corresponding cluster centers. erefore, the objective function is also called the error squared sum criterion function. In order to obtain the cluster center cj of each update, the following update iterative formula can be obtained according to the optimization theory of Lagrangian conditional extrema:

Multi-View Clustering Model.
A more effective multiview clustering technology has been discovered through the investigation of traditional clustering analysis methods. e technology allows multi-view data with multiple features to learn collaboratively in the clustering process, solving the problem of complex data with multiple features. Traditional clustering algorithms may be limited to dealing with a single feature of complex data. Early multi-view clustering techniques took into account each view of the data and treated each view as a separate clustering task. After obtaining the clustering results for each view, the ensemble learning mechanism is used to select an appropriate ensemble learning strategy, and the results of multiple views are combined to produce the final marriage result. It has been discovered that multi-view learning makes use of the connections between various features in the dataset by studying various models of multi-view algorithms [22]. Make full use of the differences and correlations between various points of view so that the final learning outcomes are consistent. Figure 4 depicts the multi-view learning model.

Multi-View K-Means Algorithm.
e evaluation center is the central component of the mental health management model for college students. e evaluation center is primarily used to collect CSMH data and enter it into the trained mental state evaluation model. e model uses the evaluation results to determine each college student's mental state. e most important of these is evaluating the model. CSMH data include many aspects, such as social data, questionnaires, academic data, personal basic information, and so on. As a result, this paper intends to train the evaluation model using a multi-view learning model.
In order to represent the data with multiple features by K-means, a weight vector W is assigned to the clustering of each view, and W satisfies the following conditions: A multi-view dataset X has N samples and V views,  Computational Intelligence and Neuroscience is the ith cluster center. e number of clusters is C, and the total number of data is N. w p v is the weight vector of the vth view, and p is the weight index.
Since the quality of each view is different, the algorithm needs to assign a corresponding weight value to each view to represent the importance of the view. When the data of a certain angle of view is scattered, or when a certain angle of view is greatly interfered by noise, it means that the quality of the angle of view is low, and the weight of the data of this angle of view is assigned 0. e scalar η is introduced in this paper; when η belongs to the kth cluster, it is equal to 1, otherwise it is equal to 0. e MvK-means algorithm's objective function is as follows: Using the Lagrange multiplier optimization method to minimize equation (5), the cluster center z j of the MvKmeans algorithm is obtained, and the iterative expression of the weight vector w v is: Algorithm 1

Experimental Data Collection.
In order to analyze the performance of the psychometric model used in this paper, the model needs to be trained. erefore, this study collected the mental health data of a total of 800 students in computer-related majors from freshman to senior year in a university. Mental health data mainly include basic information of students and questionnaire data. e basic information is shown in Table 1. e comparison table for  converting each information in Table 1 into numerical value is shown in Table 2. e questionnaire design is shown in Table 3. e two kinds of information shown in Table 1 and Table 3 are taken as two viewing angle data, respectively. A total of 800 samples. Among them, 600 samples are used as training set and 200 samples are used as the test set.

Experimental Results and Analysis.
is section assesses the proposed mental state assessment model's performance on CSMH data. e comparison models used are traditional K-means and fuzzy C-means (FCM). e evaluation indicators use Normalized Mutual Information (NMI) and Rand index (RI). e number of clusters is set to 5, which represent extremely poor, poor, medium, average, and good mental states, respectively. e system generates the initial cluster centers at random. Table 1 shows the attributes of view 1 data, and a total of 8 attributes are used as input variables. Table 3   Computational Intelligence and Neuroscience 7 total of 8 attributes are used as input variables. ere is a limit of 100 iterations. In order to calculate the evaluation index, the real psychological state of each student must be known. As the standard data, this paper uses the student SCL-90 symptom self-rating scale to obtain the psychological state results of 800 college students. e experimental results obtained by each model are shown in Table 4 and Figure 5: e results show that the model proposed in this paper produces optimal evaluation results. Both reference [21] and the model in this paper belong to the multi-view model, and the experimental results show that the experimental results obtained by the multi-view model are significantly better than the single-view learning models such as K-means and FCM. FCM performs slightly better than K-means due to the fact that FCM introduces membership, which reduces the impact of suffering data on the final result. e proposed model performs better than reference [21] because the proposed model introduces a weighting strategy, and each view data will be given corresponding weights according to its own contribution to the results. e weighting strategy can improve the contribution of high-quality views without losing useful information in low-quality view data.

Conclusion
ere are many college students, but fewer college teachers and student managers. In this case, the teacher is unable to accurately understand each student's psychological state. College students' psychological problems are becoming more visible as the environment in which they live becomes more complex and pressure increases. e specific manifestation is a daily increase in the number of college students who have poor mental health. e mental health of college students has a direct impact on the quality of talent training and is linked to the country's future development. As a result, people from all walks of life should pay close attention to how CSMH is managed. Furthermore, relevant mental health management institutions should prioritize CSMH management. Only in this manner will we be able to cultivate high-quality talent capable of adapting to the country's ongoing development in the twenty-first century. As a result, the MvK-means model is proposed in this paper for assessing CSMH. is model is unique in that it employs a multi-view strategy and assigns different weights to different views based on their contribution. e experimental results show that the model has some advantages in assessing college students' mental health. Colleges and universities can implement various management strategies for students with poor mental health based on accurate assessment results.
is study's work has the following limitations. First, the data gathered are insufficiently comprehensive. is study primarily collects data from science and engineering students, and the status of CSMH in various major categories will vary. Second, data preprocessing should be improved. To improve data compactness, attributes with high contribution should be selected as much as possible, while attributes with low contribution should be discarded. ird, the model can be improved further to improve the model's evaluation performance. is study will conduct additional research and optimization on the three problems listed above in the future.

Data Availability
e labeled dataset used to support the findings of this study can be obtained from the corresponding author upon request.

Conflicts of Interest
e authors declare no conflicts of interest.  Computational Intelligence and Neuroscience 9