Constrained matrix factorization for semi-weakly learning with label proportions

作者:

Highlights:

• We propose a novel learning problem called semi-weakly learning with label proportions (SLLP), which has more extensive application scenarios.

• We contribute a noval method based on non-negative matrix factorization, called Proportion Constrained Matrix Factorization (PCMF).

• This method can not only effectively incorporate the label and proportion information, but also explore the local manifold structure information of training data.

• It also can make the data points from the same class be more likely merged together in the latent representation space, which leads to the more discriminating power.

• Sufficient experimental results on the benchmark datasets demonstrates its superiority over the state-of-the-art methods for LLP problem and efficiency on solving the SLLP problem.

摘要

•We propose a novel learning problem called semi-weakly learning with label proportions (SLLP), which has more extensive application scenarios.•We contribute a noval method based on non-negative matrix factorization, called Proportion Constrained Matrix Factorization (PCMF).•This method can not only effectively incorporate the label and proportion information, but also explore the local manifold structure information of training data.•It also can make the data points from the same class be more likely merged together in the latent representation space, which leads to the more discriminating power.•Sufficient experimental results on the benchmark datasets demonstrates its superiority over the state-of-the-art methods for LLP problem and efficiency on solving the SLLP problem.

论文关键词:Matrix factorization,Semi-weakly learning with label proportions,Weakly supervised,Dimension reduction,Local geometric consistency

论文评审过程:Received 5 March 2018, Revised 19 July 2018, Accepted 7 January 2019, Available online 17 January 2019, Version of Record 18 February 2019.

论文官网地址:https://doi.org/10.1016/j.patcog.2019.01.016