Semi-supervised transfer discriminant analysis based on cross-domain mean constraint

作者:Shaofei Zang, Yuhu Cheng, Xuesong Wang, Qiang Yu

摘要

In this paper, a novel semi-supervised feature extraction algorithm, i.e., semi-supervised transfer discriminant analysis (STDA) with knowledge transfer capability is proposed, based on the traditional algorithm that cannot get adapted in the change of the learning environment. By using both the pseudo label information from target domain samples and the actual label information from source domain samples in the label iterative refinement process, not only the between-class scatter is maximized while that within-class scatter is minimized, but also the original space structure is maintained via Laplacian matrix, and the distribution difference is reduced by using maximum mean discrepancy as well. Moreover, semi-supervised transfer discriminant analysis based on cross-domain mean constraint (STDA-CMC) is proposed. In this algorithm, the cross-domain mean constraint term is incorporated into STDA, such that knowledge transfer between domains is facilitated by making source and target samples after being projected are located more closely in the low-dimensional feature subspace. The proposed algorithm is proved efficient and feasible from experiments on several datasets.

论文关键词:Semi-supervised discriminant analysis, Transfer learning, Cross-domain mean constraint, Maximum mean discrepancy

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论文官网地址:https://doi.org/10.1007/s10462-016-9533-3