Linear and support vector regressions based on geometrical correlation of data
スポンサーリンク
概要
- 論文の詳細を見る
Linear regression (LR) and support vector regression (SVR) are widely used in data analysis. Geometrical correlation learning (GcLearn) was proposed recently to improve the predictive ability of LR and SVR through mining and using correlations between data of a variable (inner correlation). This paper theoretically analyzes prediction performance of the GcLearn method and proves that GcLearn LR and SVR will have better prediction performance than traditional LR and SVR for prediction tasks when good inner correlations are obtained and predictions by traditional LR and SVR are far away from their neighbor training data under inner correlation. This gives the applicable condition of GcLearn method.
- CODATAの論文
著者
-
Tu Chongyang
School of Computer Science and Engineering, Xidian University
-
Wang Kaijun
School of Computer Science and Engineering, Xidian University
-
Zhang Junying
School of Computer Science and Engineering, Xidian University
-
Guo Lixin
Dept of Computer Science, Xian Institute of Post-telecommunications
関連論文
- CVAP: Validation for Cluster Analyses
- Linear and support vector regressions based on geometrical correlation of data