Weighted Multisource Tradaboost

In this paper we propose an improved method for transfer learning that takes into account the balance between target and source data. This method builds on the state-of-the-art Multisource Tradaboost, but weighs the importance of each datapoint taking into account the amount of target and source data available. A comparative study is then presented exposing the performance of four transfer learning methods as well as the proposed Weighted Multisource Tradaboost. The experimental results show that the proposed method is able to outperform the base method as the number of target samples increase. These results are promising in the sense that source-target ratio weighing may be a path to improve current methods of transfer learning. However, against the asymptotic conjecture, all transfer learning methods tested in this work get outperformed by a no-transfer SVM for large number on target samples.

[1]  Qiang Yang,et al.  Boosting for transfer learning , 2007, ICML '07.

[2]  Yi Yao,et al.  Boosting for transfer learning with multiple sources , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[3]  Sebastian Nowozin,et al.  On feature combination for multiclass object classification , 2009, 2009 IEEE 12th International Conference on Computer Vision.

[4]  Jude Shavlik,et al.  Chapter 11 Transfer Learning , 2009 .

[5]  Barbara Caputo,et al.  Learning Categories From Few Examples With Multi Model Knowledge Transfer , 2014, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[6]  G. Griffin,et al.  Caltech-256 Object Category Dataset , 2007 .

[7]  Marta Mejail,et al.  Transfer Learning Decision Forests for Gesture Recognition , 2017, Gesture Recognition.