A novel framework jointly captures flat and hierarchical side information in recommender systems and shows significant performance gains over state-of-the-art methods on real-world datasets.
Marginalized Denoising Autoencoders for Domain Adaptation
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abstract
Stacked denoising autoencoders (SDAs) have been successfully used to learn new representations for domain adaptation. Recently, they have attained record accuracy on standard benchmark tasks of sentiment analysis across different text domains. SDAs learn robust data representations by reconstruction, recovering original features from data that are artificially corrupted with noise. In this paper, we propose marginalized SDA (mSDA) that addresses two crucial limitations of SDAs: high computational cost and lack of scalability to high-dimensional features. In contrast to SDAs, our approach of mSDA marginalizes noise and thus does not require stochastic gradient descent or other optimization algorithms to learn parameters ? in fact, they are computed in closed-form. Consequently, mSDA, which can be implemented in only 20 lines of MATLAB^{TM}, significantly speeds up SDAs by two orders of magnitude. Furthermore, the representations learnt by mSDA are as effective as the traditional SDAs, attaining almost identical accuracies in benchmark tasks.
fields
cs.IR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Recommender Systems with Heterogeneous Side Information
A novel framework jointly captures flat and hierarchical side information in recommender systems and shows significant performance gains over state-of-the-art methods on real-world datasets.