Robust top-k multiclass SVM for visual category recognition
conference contribution
posted on 2024-11-03, 14:50 authored by Xiaojun ChangXiaojun Chang, Yao-Liang Yu, Yi YangClassification problems with a large number of classes inevitably involve overlapping or similar classes. In such cases it seems reasonable to allow the learning algorithm to make mistakes on similar classes, as long as the true class is still among the top-k (say) predictions. Likewise, in applications such as search engine or ad display, we are allowed to present k predictions at a time and the customer would be satisfied as long as her interested prediction is included. Inspired by the recent work of [15], we propose a very generic, robust multiclass SVM formulation that directly aims at minimizing a weighted and truncated combination of the ordered prediction scores. Our method includes many previous works as special cases. Computationally, using the Jordan decomposition Lemma we show how to rewrite our objective as the difference of two convex functions, based on which we develop an eficient algorithm that allows incorporating many popular regularizers (such as the l2 and l1 norms). We conduct extensive experiments on four real large-scale visual category recognition datasets, and obtain very promising performances. © 2017 Association for Computing Machinery.
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- 2. ISBN - Is published in 9781450348874 (urn:isbn:9781450348874)
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75End page
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Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD 2017)Name of conference
KDD 2017Publisher
Association for Computing MachineryPlace published
United StatesStart date
2017-08-13End date
2017-08-17Language
EnglishCopyright
© 2017 Association for Computing Machinery.Former Identifier
2006109454Esploro creation date
2021-09-08Usage metrics
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