基于人工智能的调查回复聚类新方法

J. Laskowski, Paweł Tomiło
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引用次数: 0

摘要

许多研究项目,尤其是社会科学研究,都依赖于对调查回复进行聚类。在分析调查数据时,传统的聚类算法有几个缺点。人工智能(AI)和机器学习(ML)的最新发展使得更有效地分析调查数据成为可能。为了确定分组的有效性,我们采用 Silhouette score、Calinski-Harabasz score 和 Davies-Bouldin score 指标,将新的 VAE 聚类方法与 K-means、PCA 和 k-means 以及 Agglomerative Hierarchical Clustering 方法进行了比较。在 Silhouette 评分方面,所开发的 VAE 方法对调查回复进行聚类的平均效果比其他方法高出 69%。在 Calinski-Harabasz Score 和 Davies-Bouldin Score 方面,VAE 方法分别比其他方法高出 164% 和 111%。VAE 方法可以对受访者的回答进行最有效的分组,从而捕捉数据中的复杂关系和模式。此外,该方法还适用于分析不同类型的调查数据(连续数据、分类数据和混合数据),并能抵御噪声和缺失数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new AI-based method for clustering survey responses
Many research projects, particularly in social science research, depend on clustering survey responses. When analyzing survey data, traditional clustering algorithms have several drawbacks. The ability to analyze survey data more effectively has been made possible by recent developments in artificial intelligence (AI) and machine learning (ML). The aim of this article is to present a new, AI-based method of clustering survey responses using a Variational Autoencoder (VAE).To determine the effectiveness of grouping, the new VAE clustering method was compared with K-means, PCA and k-means, and Agglomerative Hierarchical Clustering methods by applying the Silhouette score, the Calinski-Harabasz score, and the Davies-Bouldin score metrics.In the case of the Silhouette Score, the developed VAE method obtained a 69% higher average effectiveness of clustering survey responses than the others. For the Calinski-Harabasz Score and the Davies-Bouldin Score, respectively, the VAE method outperformed the other methods by 164% and 111%, respectively.The VAE method allowed for the most effective grouping of responses given by respondents. It has made it possible to capture complex relationships and patterns in the data. In addition, the method is suitable for analyzing different types of survey data (continuous, categorical, and mixed data) and is resistant to noise and missing data.
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