Abstract-We propose a heterogeneous information network mining algorithm: feature-enhanced RankClass (F-RankClass). F-RankClass extends RankClass to a unified classification framework that can be applied to binary or multiclass classification of unimodal or multimodal data. We experimented on a multimodal document dataset, 2008/9 Wikipedia Selection for Schools. For unimodal classification, F-RankClass is compared to support vector machines (SVMs). F-RankClass provides improvements up to 27.3% on the Wikipedia dataset. For multimodal document classification, F-RankClass shows improvements up to 19.7% in accuracy when compared to SVM-based meta-classifiers. We also study 1) how the structure of the network and 2) how the choice of parameters affect the classification results.
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