Music Education to Rescue Psychological Stress in Social Crisis Based on Fuzzy Prediction Algorithm

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Introduction
In music education, it is necessary to combine the social crisis for the relief and suppression analysis of the psychological rescue function of music education and establish a statistical analysis model of the psychological rescue function of music education in the social crisis.Combined with quantitative statistical analysis methods, the prediction and analysis of the psychological rescue function of music education in social crises are constructed, and the fuzzy detection analysis model of the psychological rescue function of music education in social crises is constructed [1].
rough the load dynamic analysis method, the dynamic analysis of the psychological rescue function of music education in social crisis is carried out.Combining the methods of dynamic statistical analysis and big data analysis, the improvement and fuzzy dynamic analysis of music education in social crisis is carried out, which improves the output stability of music education in social crisis [2].
Combined with the method of ambiguity analysis, the statistical analysis model of big data is used to predict and analyze the psychological rescue function of music education in social crisis.e dynamic big data joint analysis method is used to extract the dynamic feature quantity of the psychological rescue function of music education in social crisis.
e prediction and dynamic evaluation of the psychological rescue function of music education in a social crisis have been carried out, which has improved the stability of the psychological rescue function of music education in a social crisis.e research on the rescue function prediction and big data analysis methods of music education has attracted great attention [3].e prediction of the bailout function of music education is based on the big data collection and feature analysis of the psychological rescue function of music education.Among the traditional methods, the dynamic prediction methods for the rescue function of music education in social crisis mainly include fuzzy feature analysis methods, correlation dimension statistical analysis methods, and dynamic response feature detection methods.Reference [4] proposed a method for predicting the psychological rescue function of music education in social crisis based on the SSA-PPR model.It used the SSA-PPR model to build a big data statistical analysis model for the prediction of the psychological rescue function of music education in social crises and combined fuzzy information detection methods to achieve the psychological rescue function prediction of music education.
is method improves the prediction accuracy of the rescue function of music education, but the prediction of the rescue function of music education by this method is ambiguous and has poor correlation.Reference [5] proposed a function prediction model based on descriptive statistical analysis and performed a change prediction and dynamic analysis of the psychological rescue function of music education in a social crisis.e dynamic feature quantity reflecting the psychological rescue function of music education in social crisis is extracted, and the method of correlation feature analysis is used to perform dynamic analysis and optimal scheduling of the psychological rescue function of music education in social crisis.
is method has a relatively high degree of ambiguity in the dynamic analysis of the changes in the psychological rescue function of music education during social crises, and its ability to identify features is not good [6].
In order to solve the above problems, this paper proposes a prediction model for the psychological rescue function of music education in social crisis based on quantitative statistical feature analysis.e big data feature detection of the psychological rescue function of music education in social crisis is carried out by the method of fuzziness feature extraction.e quantitative statistical feature analysis method is used to mine the dynamic features of the psychological rescue function of music education in social crisis and establish the statistical feature quantity of psychological rescue function of music education in social crisis.In the simulation experiment, combined with the descriptive statistical analysis method, the rescue function prediction of music education in social crisis is realized.

Flow Sequence Modeling of the Rescue Function of Music
Education in Social Crisis.In order to realize the prediction of the psychological rescue function of music education in social crisis, the SSA-PPR model is used to build a statistical analysis model of big data for the prediction of psychological rescue function of music education in social crisis.A descriptive statistical analysis method was used to establish the characteristic sequence distribution model of the psychological rescue function of music education in social crisis and to analyze the correlation feature of the psychological rescue function of music education in social crisis.e predictive feature quantity of the psychological rescue function of music education in social crisis is extracted, and a vertical topological analysis model of psychological rescue function of music education in social crisis is constructed.rough yield response control and fuzzy parameter identification methods, the longitudinal characteristics of the psychological rescue function of music education in social crisis are analyzed [7][8][9].Combined with the fuzzy information correlation prediction method, the rescue function prediction model of music education in social crisis is obtained, and the longitudinal distribution sequence of rescue function of music education in social crisis is as follows: is a set of dynamic distribution features of the psychological rescue function of music education in social crisis.
is the load intensity distribution set of the psychological rescue function of music education in social crisis.
e attribute value of the psychological rescue function of music education in the social crisis of In the prediction process of the psychological rescue function of music education in a social crisis, a directed graph analysis model ) is used to represent the statistical distribution of the psychological rescue function of music education in a social crisis where V is the autocorrelation distribution set of the psychological rescue function of music education in social crisis, , and the vertical imbalance dynamic distribution set of the psychological rescue function of music education in social crisis is q i (t1) � [w1, x1, y1, z1] and q i (t2) � [w2, x2, y2, z2].Calculating the feature quantity of the plane motion state of the psychological rescue function of music education in the social crisis, the feature is the dynamic weight of the psychological rescue function of music education in a social crisis.Using high-dimensional phase space reconstruction technology to carry out spatial reorganization of the psychological rescue function sequence of music education in social crisis, the reconstructed phase space is as follows: where x(t) is the dynamic feature distribution set of the psychological rescue function of music education in social crisis, J is the disturbance window function, m is the embedding dimension of the psychological rescue function of music education in social crisis, and Δt is the jump width of psychological rescue function of music education in social crisis.e probability density of the state distribution of the psychological rescue function state of music education in the social crisis is as follows: where β is a positive definite periodic solution and w(e p k q ) is the fluctuation coefficient of the psychological rescue function of music education in a social crisis.Combined with the fuzzy prediction algorithm, the characteristic analysis of the psychological rescue function of music education in social crisis is carried out, and a descriptive statistical analysis model of the psychological rescue function of music education in social crisis is established.rough the fuzziness feature extraction method, the big data feature detection of the rescue function of music education in social crisis [10], the difference function is as follows: where α is the adaptive adjustment coefficient of the psychological rescue function of music education in social crisis and W is the steady-state feature solution for the prediction of psychological rescue function of music education in social crisis, and its value range is 0 ≤ α ≤ 1.Based on the above analysis, a time series distribution model of the psychological rescue function of music education in social crises is established, and a dynamic analysis is performed based on the psychological rescue function distribution of music education in social crises [11].

Statistical Analysis of the Rescue Function of Music
Education.
e PCA model is used to build a big data statistical analysis model for the prediction of the psychological rescue function of music education in a social crisis.e SSA-PPR model function is as follows: Taking the main component features of the psychological rescue function of music education in social crisis as the reference feature quantity, the fourth-order Runge-Kutta method is used to solve the longitudinal imbalance feature quantity of psychological rescue function of music education in social crisis [12].e kernel function of the model distribution for the psychological rescue function of music education is k(x i , x j ).en, the linear programming function of the psychological rescue function of music education in the social crisis is as follows: e linear programming design of the psychological assistance function of music education in social crises uses the square programming algorithm [13].
e optimized function for predicting the psychological assistance function of music education in social crises is as follows: To construct the topological distribution function of the psychological rescue function of music education in social crisis, the statistical analysis model of psychological rescue function of music education in social crisis is as follows: According to the results of statistical analysis, the characteristics of the psychological rescue function of music education in social crisis are decomposed, and the multidimensional scale feature distribution is obtained as follows: where p drop is the SSA-PPR model parameter of the psychological rescue function of music education in social crisis.rough the fuzziness feature extraction method, the big data feature detection of the psychological rescue function of music education in social crisis is established to establish a descriptive statistical analysis model of the psychological rescue function of music education in social crisis [14].

Big Data Analysis of the Rescue Function of Music Education in Social Crisis.
is paper proposes a method for predicting the psychological rescue function of music education in the social crisis based on the SSA-PPR model.By extracting the feature analysis of the psychological rescue function of music education in social crisis [15], the distribution set of the statistical characteristics of the two-way planning to analyze the psychological rescue function of music education in social crisis is as follows: where m → �  c i�1 p i m → i is the autocorrelation adjustment component of the psychological rescue function of music education in social crisis.According to the correlation index of the psychological rescue function of music education in social crisis, n variables of the psychological rescue function of music education in social crisis are collected.Taking the feature decomposition to get the association rule set of the psychological rescue function of music education in social crisis, expressed by a j , the template function of the psychological rescue function prediction of music education in social crisis is described as follows: Both G j and G k have a strong correlation.G k represents the difference in the psychological rescue function of music education in social crisis.G j is the main component characteristic quantity of the psychological rescue function of music education in social crisis.
e template matching method is used to obtain the adaptive weighting coefficient of the psychological rescue function of music education in social crisis, and the fuzzy information weighting matrix is as follows: Using adaptive learning methods, the fitting coefficient of the psychological rescue function of music education in social crisis is S � (x 1 , y 1 , u(x 1 )), . . ., (x l , y l , u(x l )) where , σ is the model parameter of the statistics of the psychological rescue function of music education in the social crisis and u(x j ) is the psychological rescue function of music education in social crisis.e output of (x j , y j , u(x j )) is the correlation (j � 1, ..., l) of y j � 1 (positive category) or y j � −1 (negative category).Combined with fuzzy information mining and adaptive learning methods, the dynamic analysis and prediction of the psychological rescue function of music education in social crisis are carried out.

Rescue Function of Music Education.
According to the analysis of the psychological rescue function of music education in social crises, dynamic monitoring and feature prediction are carried out to establish the statistical characteristic quantity of psychological rescue function of music education in social crises.
is improves the ability of ambiguity prediction and feature optimization judgment of the psychological rescue function of music education in social crisis.e fuzzy output feature set of music education is CH i (i ∈ C 1 ).Combined with the optimized statistical analysis results, the psychological relief effect of music education in social crisis was predicted accurately, and, the output is as follows: . e statistical feature quantity of the psychological rescue function of music education in social crisis is established, and dynamic analysis based on the fusion result of the psychological rescue function of music education in social crisis is performed.e characteristic quantity of ambiguity is as follows: where y kj represents the unbalanced feature quantity of the psychological rescue function of music education in social crisis and N is the data length of psychological rescue function of music education in social crisis.rough the association data mining, the optimization prediction and evaluation of the psychological rescue function of music education in social crisis are realized.

Simulation Test and Analysis
rough simulation experiments, the effectiveness of the method in this paper in realizing the prediction and quantitative analysis of the psychological rescue function of music education in social crisis is verified.e number of days of bailout guidance for social education in social crisis is 24 days, the length of the intermittent sample sampling is 1 h, the number of samples for statistical analysis of the psychological rescue function of music education is 500, the correlation coupling coefficient is 0.26, the ambiguity coefficient is 0.28, and the root mean square error is set to 0.25.According to the above parameter settings, the rescue function information of music education in social crisis is sampled, and the large data distribution of the sampled samples is shown in Figure 1.
According to the sampling results of the psychological rescue function information of music education in the social crisis in Figure 1, the changes in the psychological rescue function of music education in the social crisis are predicted.Using the SSA-PPR model to build a big data statistical analysis model for the prediction of the rescue function of music education in social crises, the rescue function index of music education in social crises is obtained, as shown in Figure 2.
It can be seen from Figure 2 that the method in this paper can effectively predict the rescue function of music education in social crisis, and the prediction has good convergence.e prediction accuracy test was conducted, and the comparison results are shown in Table 1.It can be obtained that the method proposed in this paper has a higher precision in predicting the psychological rescue function of music education in social crisis.

Conclusion
In order to construct an ambiguity detection and analysis model for the psychological rescue function of music education in social crises, this paper combines the method of ambiguity analysis and uses the big data statistical analysis model to predict and analyze the psychological rescue function of music education in social crisis.
is paper proposes a prediction model of the psychological rescue function of music education based on quantitative statistical characteristics analysis.It uses high-dimensional phase space reconstruction technology to carry out the spatial reorganization of the psychological rescue function sequence of music education in social crisis.A descriptive statistical analysis model for the psychological rescue function of music education in social crises is established, and the big data feature detection of the psychological rescue function of music education in social crises is carried out by fuzziness feature extraction.And combined with fuzzy information mining and adaptive learning methods, the dynamic analysis and prediction of the psychological rescue function of music education in social crisis are carried out.
e study shows that the accuracy of the rescue function prediction of music education in social crises in this paper is high, and the feature matching is good.

Figure 1 :Figure 2 :
Figure 1: Time domain distribution of the psychological rescue function of music education in social crisis.

Table 1 :
Comparison of prediction accuracy of psychological rescue function of music education in social crisis.