6533b855fe1ef96bd12b06f1

RESEARCH PRODUCT

Combining feature extraction and expansion to improve classification based similarity learning

Francisco GrimaldoEmilia López-iñestaMiguel Arevalillo-herráez

subject

Feature extractionLinear classifier02 engineering and technologySemi-supervised learning010501 environmental sciencesMachine learningcomputer.software_genre01 natural sciencesk-nearest neighbors algorithmArtificial Intelligence0202 electrical engineering electronic engineering information engineering0105 earth and related environmental sciencesMathematicsbusiness.industryDimensionality reductionPattern recognitionStatistical classificationSignal Processing020201 artificial intelligence & image processingComputer Vision and Pattern RecognitionArtificial intelligencebusinessFeature learningcomputerSoftwareSimilarity learning

description

Abstract Metric learning has been shown to outperform standard classification based similarity learning in a number of different contexts. In this paper, we show that the performance of classification similarity learning strongly depends on the data format used to learn the model. We then present an Enriched Classification Similarity Learning method that follows a hybrid approach that combines both feature extraction and feature expansion. In particular, we propose a data transformation and the use of a set of standard distances to supplement the information provided by the feature vectors of the training samples. The method is compared to state-of-the-art feature extraction and metric learning approaches, using linear learning algorithms in both a classification and a regression experimental setting. Results obtained show comparable performances in favor of the method proposed.

https://doi.org/10.1016/j.patrec.2016.11.005