Short text classification method fusing knowledge graph and topic model
A technology of knowledge graph and topic model, which is applied in text database clustering/classification, unstructured text data retrieval, semantic analysis, etc. It can solve the problems of short space, unsatisfactory effect, and noise in text classification, and achieve good technical results. , the effect of mitigating inaccuracy
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[0035] In order to make the above-mentioned features and advantages of the present invention more comprehensible, the following specific embodiments are described in detail in conjunction with the accompanying drawings.
[0036] An embodiment of the present invention provides a short text classification method that integrates a knowledge map and a topic model, including the following steps:
[0037] 1. Short text preprocessing
[0038] The short text data with existing labels is used as the training set, and the short text data to be classified is used as the test set, and the text is preprocessed such as removing special symbols, removing stop words, and word segmentation.
[0039] Word segmentation of short texts: use the jieba word segmentation tool to initially divide short texts into a collection of words.
[0040] Remove stop words: Customize the stop word list to delete meaningless words in the word set, such as "的", "了" and punctuation marks.
[0041] Finally get the...
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