Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/126922
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Type: Conference paper
Title: Deep autoencoder for recommender systems: Parameter influence analysis
Author: Tran, D.H.
Hussain, Z.
Zhang, W.E.
Khoa, N.L.D.
Tran, N.H.
Sheng, Q.Z.
Citation: Proceedings of the 29th Australasian Conference on Information Systems (ACIS2018), 2018, pp.1-12
Publisher: University of Technology Sydney ePress
Publisher Place: Sydney
Issue Date: 2018
ISBN: 9780648124245
Conference Name: Australasian Conference on Information Systems (ACIS) (3 Dec 2018 - 5 Dec 2018 : Sydney, Australia)
Statement of
Responsibility: 
Dai Hoang Tran, Zawar Hussain, Wei Emma Zhang, Nguyen Lu Dang Khoa, Nguyen H. Tran, Quan Z. Sheng
Abstract: Recommender systems have recently attracted many researchers in the deep learning community. The state-of-the-art deep neural network models used in recommender systems are multilayer perceptron and deep autoencoder (DAE). In this work, we focus on DAE model due to its superior capability to reconstruct the inputs, which works well for recommender systems. Existing works have similar implementations of DAE but the parameter settings are vastly different for similar datasets. In this work, we have built a flexible DAE model, named FlexEncoder that uses configurable parameters and unique features to analyse the parameter influences on the prediction accuracy of recommender systems. Extensive evaluation on the MovieLens datasets are conducted, which drives our conclusions on the influences of DAE parameters. We find that DAE parameters strongly affect the prediction accuracy of the recommender systems, and the effect remains valid for similar datasets in a larger.
Keywords: Recommender systems; Autoencoder; Neural network
Rights: Copyright: © 2018 Dai Hoang Tran, Zawar Hussain, Wei Zhang, Nguyen Lu Dang Khoa, Nguyen H. Tran & Quan Z. Sheng. This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial 3.0 Australia License, which permits non-commercial use, distribution, and reproduction in any medium, provided the original author and ACIS are credited.
DOI: 10.5130/acis2018.aj
Published version: https://utsepress.lib.uts.edu.au/site/books/e/10.5130/acis2018/
Appears in Collections:Aurora harvest 4
Computer Science publications

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