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Poster
in
Workshop: Machine Learning for Systems

Ad-Rec: Advanced Feature Interactions to Address Covariate-Shifts in Recommendation Networks

Muhammad Adnan · Yassaman Ebrahimzadeh Maboud · Divya Mahajan · Prashant Nair


Abstract:

Recommendation models enhance user experiences by utilizing input feature correlations. However, deep learning-based models encounter challenges from changing user behavior and item features, leading to data distribution shifts. Effective cross-feature learning is crucial in addressing this. We introduce Ad-Rec, an advanced network that leverages feature interaction techniques to tackle these issues. It utilizes masked transformers to learn higher-order cross-features while mitigating data distribution drift. Our approach improves model quality, accelerates convergence, and reduces training time. We demonstrate scalability of Ad-Rec and its superior model quality through extensive ablation studies.

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