Multi-stage Multi-task feature learning via adaptive threshold
Abstract
Multi-task feature learning aims to identity the shared features among tasks to improve generalization. It has been shown that by minimizing non-convex learning models, a better solution than the convex alternatives can be obtained. Therefore, a non-convex model based on the capped- regularization was proposed in \cite{Gong2013}, and a corresponding efficient multi-stage multi-task feature learning algorithm (MSMTFL) was presented. However, this algorithm harnesses a prescribed fixed threshold in the definition of the capped- regularization and the lack of adaptivity might result in suboptimal performance. In this paper we propose to employ an adaptive threshold in the capped- regularized formulation, where the corresponding variant of MSMTFL will incorporate an additional component to adaptively determine the threshold value. This variant is expected to achieve a better feature selection performance over the original MSMTFL algorithm. In particular, the embedded adaptive threshold component comes from our previously proposed iterative support detection (ISD) method \cite{Wang2010}. Empirical studies on both synthetic and real-world data sets demonstrate the effectiveness of this new variant over the original MSMTFL.
Cite
@article{arxiv.1406.4465,
title = {Multi-stage Multi-task feature learning via adaptive threshold},
author = {Yaru Fan and Yilun Wang},
journal= {arXiv preprint arXiv:1406.4465},
year = {2015}
}
Comments
13 pages,12 figures. arXiv admin note: text overlap with arXiv:1210.5806 by other authors