An ensemble approach to multi-view multi-instance learning

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摘要

Multi-view learning combines data from multiple heterogeneous sources and employs their complementary information to build more accurate models. Multi-instance learning represents examples as labeled bags containing sets of instances. Data fusion of different multi-instance views cannot be simply concatenated into a single set of features due to their different cardinality and feature space. This paper proposes an ensemble approach that combines view learners and pursues consensus among the weighted class predictions to take advantage of the complementary information from multiple views. Importantly, the ensemble must deal with the different feature spaces coming from each of the views, while data for the bags may be partially represented in the views. The experimental study evaluates and compares the performance of the proposal with 20 traditional, ensemble-based, and multi-view algorithms on a set of 15 multi-instance datasets. Experimental results indicate the better performance of ensemble methods than single-classifiers, but especially the best results of the multi-view multi-instance approaches. Results are validated through multiple non-parametric statistical analysis.

论文关键词:Multi-view,Multi-instance,Classification,Ensemble

论文评审过程:Received 25 January 2017, Revised 26 August 2017, Accepted 28 August 2017, Available online 30 August 2017, Version of Record 4 October 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.08.022