TY - JOUR AU - Yan Zheng AU - Fuqing Li AU - Cui Li AU - Zheyuan Zhang AU - Rui Cao AU - Noman Sohail AB - This paper investigates text similarity methods in the field of NLP, improves upon the WMD, and develops the SWC-WMD distance, forming the basis for a clustering method for long ICH texts. Clustering experiments on the constructed ICH long text dataset using WMD, SWC-WMD, and TFIDF-WMD distances were conducted. The impact of the number of feature words on clustering results and the effect of different distances on clustering outcomes were assessed based on accuracy and F1 values from the evaluation criteria. The final results show that the SWC-WMD distance improves the accuracy and F1 values of the ICH long text clustering results compared to the other two distances, thereby proving the effectiveness of the methods proposed in this paper. BT - Journal of Organizational and End User Computing DO - 10.4018/JOEUC.349736 M1 - 1 N2 - This paper investigates text similarity methods in the field of NLP, improves upon the WMD, and develops the SWC-WMD distance, forming the basis for a clustering method for long ICH texts. Clustering experiments on the constructed ICH long text dataset using WMD, SWC-WMD, and TFIDF-WMD distances were conducted. The impact of the number of feature words on clustering results and the effect of different distances on clustering outcomes were assessed based on accuracy and F1 values from the evaluation criteria. The final results show that the SWC-WMD distance improves the accuracy and F1 values of the ICH long text clustering results compared to the other two distances, thereby proving the effectiveness of the methods proposed in this paper. PY - 2024 T2 - Journal of Organizational and End User Computing TI - A Natural Language Processing Model for Automated Organization and Analysis of Intangible Cultural Heritage VL - 36 SN - 1546-2234 ER -