Sentiment Analysis Algorithm Based on Dance Rhythmic and Melodic Features

Zhe Chen
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Abstract

INTRODUCTION: Dance is not only able to strengthen the body but also an expression of art. It can not only express the culture of a nation or a country but also express the emotions of a country. Therefore, it is essential to utilize algorithms for the study of dance rhythm and melodic characteristics in today's world, and introduces a sentiment analysis algorithm for the study.OBJECTIVES: To disseminate our traditional dance culture, carry forward the spirit of our traditional art, enhance the creative level of our dance art, improve the current dance art in our country can not better apply the algorithm, and solve the problem that our current sentiment analysis algorithm can not be combined with art disciplines.METHODS: Use the neural network and deep learning in sentiment analysis to establish a sentiment analysis algorithm adapted; then use the sentiment analysis algorithm to calculate the in-depth filtering of the dance rhythm and melodic characteristics of the research object; finally, the heat map of the dance rhythm and melodic characteristics of the SRD is calculated according to the experiment of the algorithm.RESULTS: The core influencing factors of dance rhythm and melodic features are found to be attention mechanism and LMT through heat analysis (knowledge map); the experimental results using the sentiment analysis algorithm can be found to have a significant mediating effect on the joint enhancement of dance rhythm and melodic sense.CONCLUSION: The development of dance art not only lies in communication and integration but also combination with contemporary computer technology; using sentiment analysis algorithms can better analyze the dance rhythm and melodic characteristics; therefore, the level of algorithm application in the field of dance art should be improved.
基于舞蹈节奏和旋律特征的情感分析算法
引言:舞蹈不仅能强身健体,还是一种艺术表现形式。它不仅能表现一个民族或国家的文化,还能表达一个国家的情感。因此,在当今世界,利用算法研究舞蹈节奏和旋律特点是非常必要的,本文介绍了一种情感分析算法进行研究:传播我国传统舞蹈文化,弘扬我国传统艺术精神,提高我国舞蹈艺术的创作水平,改善目前我国舞蹈艺术不能更好地应用算法的现状,解决我国目前情感分析算法不能与艺术学科相结合的问题。方法:利用情感分析中的神经网络和深度学习建立相适应的情感分析算法;然后利用情感分析算法对研究对象的舞蹈节奏和旋律特征进行深度过滤计算;最后根据算法实验计算出SRD的舞蹈节奏和旋律特征热力图。结果:通过热分析(知识图谱)发现舞蹈节奏感和旋律感特征的核心影响因素是注意力机制和LMT;利用情感分析算法的实验结果可以发现情感分析算法对舞蹈节奏感和旋律感的共同提升具有显著的中介作用。结论:舞蹈艺术的发展不仅在于传播与融合,更在于与当代计算机技术的结合,利用情感分析算法可以更好地分析舞蹈节奏感和旋律感特征,因此应提高舞蹈艺术领域的算法应用水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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