Abstract – The association classification technology based on frequent patterns is recently presented, which build the organization rules by frequent patterns in various categories and classify the new text employing these rules. However, in the current association organization methods, shortage exists in two aspects when it is applied to classify text data: one is the method ignored the information about word's occurrence in a text; the other is, the method needs pruning rules when the mass rules are generated, but that leads the veracity of classifying to drop. Therefore, this paper presents a text classification algorithm based on frequent pattern with term frequency, and obtains higher performance than other association categorization methods and some current text classification methods. Our study provides suggestion that association rule mining can be used for the construction of fast and effective classifiers for automatic text categorization.
Key Words: Machine Learning, CNN Algorithm.
| DOI: 10.17148/IJARCCE.2021.10694