A cost-reducing partial labeling estimator in text classification problem

Chen, Jiangning, Dai, Zhibo, Duan, Juntao, Hu, Qianli, Li, Ruilin, Matzinger, Heinrich, Popescu, Ionel, Zhai, Haoyan

arXiv.org Machine Learning 

We propose a new approach to address the text classification problems when learning with partial labels is beneficial. Instead of offering each training sample a set of candidate labels, we assign negative-oriented labels to the ambiguous training examples if they are unlikely fall into certain classes. We construct our new maximum likelihood estimators with self-correction property, and prove that under some conditions, our estimators converge faster. Also we discuss the advantages of applying one of our estimator to a fully supervised learning problem. The proposed method has potential applicability in many areas, such as crowdsourcing, natural language processing and medical image analysis.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found