Factorized weight interaction neural networks for sparse feature prediction

被引:0
|
作者
Dafang Zou
Mengmeng Sheng
Hui Yu
Jiafa Mao
Shengyong Chen
Weiguo Sheng
机构
[1] Zhejiang University of Technology,
[2] Hangzhou Normal University,undefined
来源
关键词
Neural network; Sparse data; Factorization machine; Feature interaction;
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学科分类号
摘要
Non-contiguous and categorical sparse feature data are widely existed on the Internet. To build a machine learning system with these data, it is important to properly model the interaction among features. In this paper, we propose a factorized weight interaction neural network (INN) with a new network structure called weight-interaction layer to learn patterns from feature interactions and factorized weight parameters of each feature interaction. The proposed INN can greatly reduce the dimension of sparse data via the weight-interaction layer, while the multi-layer neural network can be used to capture high-order feature latent patterns. Our experimental results on two real datasets show that the proposed method is able to effectively improve the prediction accuracy and generalization performance of the model, and consistently outperform related methods to be compared.
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页码:9567 / 9579
页数:12
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