Development of email classifier in Brazilian Portuguese using feature selection for automatic response
Automatic email categorization is an important application of text classification. We study the automatic reply of email business messages in Brazilian Portuguese. We present a novel corpus containing messages from a real application, and baseline categorization experiments using Naive Bayes and support Vector Machines. We then discuss the effect of lemmatization and the role of part-of-speech tagging filtering on precision and recall. Support Vector Machines classification coupled with nonlemmatized selection of verbs, nouns and adjectives was the best approach, with 87.3 Straightforward lemmatization in Portuguese led to the lowest classification results in the group, with 85.3 respectively. Thus, while lemmatization reduced precision and recall, part-of-speech filtering improved overall results.
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