2024
DOI: 10.1109/access.2024.3374770
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Enhancing Web Text Clustering Accuracy and Efficiency With a Maximum Entropy Function Model: Overcoming High-Dimensional and Directional Challenges

Xumin Zhao,
Guojie Xie,
Yi Luo
et al.

Abstract: With the rapid development of large models such as Chatgpt, text clustering has become an important research topic in data mining. However, traditional clustering algorithms face challenges in terms of text clustering due to the high dimensionality and directionality of text data; in particular, the research on web text mining is insufficient, so the accuracy and efficiency of clustering algorithms need to be improved. Aiming at the above challenges, this paper proposes a maximum entropy function model and app… Show more

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