RT - Journal Article T1 - Speech Acts Classification of Persian Language Texts Using Three Machine Leaming Methods JF - ITRC YR - 2010 JO - ITRC VO - 2 IS - 1 UR - http://ijict.itrc.ac.ir/article-1-272-en.html SP - 65 EP - 71 K1 - Speech act K1 - Persian language K1 - text processing K1 - Text To Speech K1 - Naive Bayes K1 - K-Nearest Neighbors K1 - Tree learner AB - The objective of this paper is to design a system to classify Persian speech acts. The driving vision for this work is to provide inteUigent systems such as text to speech, machine translation, text summarization, etc. that are sensitive to the speech acts of the input texts and can pronounce the corresponding intonation correctly. Seven speech acts were considered and 3 classification methods including (1) Naive Bayes, (2) K-Nearest Neighbors (KNN), and (3) Tree learner were used. The performance of speech act classification was evaluated using these methods including 10- Fold Cross-Validation, 70-30 Random Sampling and Area under ROC. KNN with an accuracy of 72% was shown to be the best classifier for the classification of Persian speech acts. It was observed that the amount of labeled training data had an important role in the classification performance. LA eng UL http://ijict.itrc.ac.ir/article-1-272-en.html M3 ER -