Towards Hybrid-grained Feature Interaction Selection for Deep Sparse Network
Abstract
Deep sparse networks are widely investigated as a neural network architecture for prediction tasks with high-dimensional sparse features, with which feature interaction selection is a critical component. While previous methods primarily focus on how to search feature interaction in a coarse-grained space, less attention has been given to a finer granularity. In this work, we introduce a hybrid-grained feature interaction selection approach that targets both feature field and feature value for deep sparse networks. To explore such expansive space, we propose a decomposed space which is calculated on the fly. We then develop a selection algorithm called OptFeature, which efficiently selects the feature interaction from both the feature field and the feature value simultaneously. Results from experiments on three large real-world benchmark datasets demonstrate that OptFeature performs well in terms of accuracy and efficiency. Additional studies support the feasibility of our method.
Cite
@article{arxiv.2310.15342,
title = {Towards Hybrid-grained Feature Interaction Selection for Deep Sparse Network},
author = {Fuyuan Lyu and Xing Tang and Dugang Liu and Chen Ma and Weihong Luo and Liang Chen and Xiuqiang He and Xue Liu},
journal= {arXiv preprint arXiv:2310.15342},
year = {2023}
}
Comments
NeurIPS 2023 poster