location: Current position: Home >> Scientific Research >> Paper Publications

Transfer learning based on graph ranking

Hits:

Indexed by:会议论文

Date of Publication:2012-05-29

Included Journals:EI、Scopus

Page Number:1353-1357

Abstract:A fundamental assumption in machine learning is that the data distributions of the training and the test sets should be identical. When the assumption does not hold, the traditional machine learning algorithms might perform worse. In this paper, we tackle this transfer learning problem by implementing a general graph ranking framework for a sentiment classification task. We construct a fusion graph model by using the in-domain and the out-of-domain data. The in-domain data can help us to get pseudo labels of the out-of-domain data. The out-of-domain data can help us to update the labels and can get the convincing prediction labels. Experimental results show the significant improvements in accuracy and demonstrate the effectiveness of this algorithm. ? 2012 IEEE.

Pre One:A comparison of some approximation definitions about neighborhood system based rough sets

Next One:基于支持向量机分类算法的番茄miRNA预测