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Papers/10,000+ Times Accelerated Robust Subset Selection (ARSS)

10,000+ Times Accelerated Robust Subset Selection (ARSS)

Feiyun Zhu, Bin Fan, Xinliang Zhu, Ying Wang, Shiming Xiang, Chunhong Pan

2014-09-12Nested Named Entity RecognitionMachine TranslationMusic ModelingVisual Object TrackingRelation ExtractionPanoptic SegmentationImage ClassificationTraffic PredictionSkeleton Based Action RecognitionPart-Of-Speech TaggingCollaborative FilteringTemporal Action Proposal GenerationSemantic SegmentationPose EstimationNode ClassificationAction RecognitionImage Generation10-shot image generationNamed Entity Recognition (NER)Fine-Grained Image ClassificationObject DetectionRGB Salient Object DetectionMultimodal Sentiment AnalysisSemi-Supervised Image Classification
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Abstract

Subset selection from massive data with noised information is increasingly popular for various applications. This problem is still highly challenging as current methods are generally slow in speed and sensitive to outliers. To address the above two issues, we propose an accelerated robust subset selection (ARSS) method. Specifically in the subset selection area, this is the first attempt to employ the $\ell_{p}(0<p\leq1)$-norm based measure for the representation loss, preventing large errors from dominating our objective. As a result, the robustness against outlier elements is greatly enhanced. Actually, data size is generally much larger than feature length, i.e. $N\gg L$. Based on this observation, we propose a speedup solver (via ALM and equivalent derivations) to highly reduce the computational cost, theoretically from $O(N^{4})$ to $O(N{}^{2}L)$. Extensive experiments on ten benchmark datasets verify that our method not only outperforms state of the art methods, but also runs 10,000+ times faster than the most related method.

Results

TaskDatasetMetricValueModel
Sentiment AnalysisCMU-MOSIAcc-287.35MCEN
Sentiment AnalysisCMU-MOSIAcc-558.02MCEN
Sentiment AnalysisCMU-MOSIAcc-750.58MCEN
Sentiment AnalysisCMU-MOSICorr0.813MCEN
Sentiment AnalysisCMU-MOSIF187.48MCEN
Sentiment AnalysisCMU-MOSIMAE0.678MCEN

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