期刊名称:Journal of Computer Sciences and Applications
印刷版ISSN:2328-7268
电子版ISSN:2328-725X
出版年度:2013
卷号:1
期号:4
页码:61-74
DOI:10.12691/jcsa-1-4-2
语种:English
出版社:Science and Education Publishing
摘要:In this article, we evaluate features and algorithms for the task of prosodic boundary prediction for Greek. For this purpose a prosodic corpus composed of generic domain text was constructed. Feature contribution was evaluated and ranked with the application of information gain ranking and correlation-based feature selection filtering methods. Resulted datasets were applied to C4.5 decision tree, one-neighbour instance based learner and Bayesian learning methods. Models performance exploitation led as to the construction of a practically optimal feature set whose prediction effectiveness was evaluated with two prosodic databases. In terms of total accuracy and F-measure, evaluation results established the decision tree effectiveness in learning rules for prosodic boundary prediction.