节点文献
Entire Solution Path for Support Vector Machine for Positive and Unlabeled Classification
【摘要】 <正>Support vector machines(SVMs)aim to find an optimal separating hyper-plane that maximizes separation between two classes of training examples(more precisely,maximizes the margin between the two classes of examples).The choice of the cost parameter for training the SVM model is always a critical issue.This analysis studies how the cost parameter determines the hyper-plane;especially for classifications using only positive data and unlabeled data.An algorithm is given for the entire solution path by choosing the‘best’cost parameter while training the SVM model.The performance of the algorithm is compared with conventional implementations that use default values as the cost parameter on two synthetic data sets and two real-world data sets.The results show that the algorithm achieves better results when dealing with positive data and unlabeled classification.
【Abstract】 Support vector machines(SVMs)aim to find an optimal separating hyper-plane that maximizes separation between two classes of training examples(more precisely,maximizes the margin between the two classes of examples).The choice of the cost parameter for training the SVM model is always a critical issue.This analysis studies how the cost parameter determines the hyper-plane;especially for classifications using only positive data and unlabeled data.An algorithm is given for the entire solution path by choosing the‘best’cost parameter while training the SVM model.The performance of the algorithm is compared with conventional implementations that use default values as the cost parameter on two synthetic data sets and two real-world data sets.The results show that the algorithm achieves better results when dealing with positive data and unlabeled classification.
【Key words】 support vector machine; cost parameter; positive and unlabeled classification;
- 【文献出处】 Tsinghua Science and Technology ,清华大学学报(自然科学版)(英文版) , 编辑部邮箱 ,2009年02期
- 【分类号】TP18
- 【被引频次】1
- 【下载频次】47