English

Robust Classification by Pre-conditioned LASSO and Transductive Diffusion Component Analysis

Machine Learning 2019-12-30 v2 Computer Vision and Pattern Recognition Statistics Theory Machine Learning Statistics Theory

Abstract

Modern machine learning-based recognition approaches require large-scale datasets with large number of labelled training images. However, such datasets are inherently difficult and costly to collect and annotate. Hence there is a great and growing interest in automatic dataset collection methods that can leverage the web. % which are collected % in a cheap, efficient and yet unreliable way. Collecting datasets in this way, however, requires robust and efficient ways for detecting and excluding outliers that are common and prevalent. % Outliers are thus a % prominent treat of using these dataset. So far, there have been a limited effort in machine learning community to directly detect outliers for robust classification. Inspired by the recent work on Pre-conditioned LASSO, this paper formulates the outlier detection task using Pre-conditioned LASSO and employs \red{unsupervised} transductive diffusion component analysis to both integrate the topological structure of the data manifold, from labeled and unlabeled instances, and reduce the feature dimensionality. Synthetic experiments as well as results on two real-world classification tasks show that our framework can robustly detect the outliers and improve classification.

Keywords

Cite

@article{arxiv.1511.06340,
  title  = {Robust Classification by Pre-conditioned LASSO and Transductive Diffusion Component Analysis},
  author = {Yanwei Fu and De-An Huang and Leonid Sigal},
  journal= {arXiv preprint arXiv:1511.06340},
  year   = {2019}
}

Comments

we will significantly change the content of this paper which makes it another paper. In order not to misleading, we decided to withdraw it. The updated version can not be shared currently, for some reason. We will update it once it is OK to be shared

R2 v1 2026-06-22T11:49:47.237Z