ATRank: An Attention-Based User Behavior Modeling Framework for Recommendation

11/17/2017
by   Chang Zhou, et al.
0

A user can be represented as what he/she does along the history. A common way to deal with the user modeling problem is to manually extract all kinds of aggregated features over the heterogeneous behaviors, which may fail to fully represent the data itself due to limited human instinct. Recent works usually use RNN-based methods to give an overall embedding of a behavior sequence, which then could be exploited by the downstream applications. However, this can only preserve very limited information, or aggregated memories of a person. When a downstream application requires to facilitate the modeled user features, it may lose the integrity of the specific highly correlated behavior of the user, and introduce noises derived from unrelated behaviors. This paper proposes an attention based user behavior modeling framework called ATRank, which we mainly use for recommendation tasks. Heterogeneous user behaviors are considered in our model that we project all types of behaviors into multiple latent semantic spaces, where influence can be made among the behaviors via self-attention. Downstream applications then can use the user behavior vectors via vanilla attention. Experiments show that ATRank can achieve better performance and faster training process. We further explore ATRank to use one unified model to predict different types of user behaviors at the same time, showing a comparable performance with the highly optimized individual models.

READ FULL TEXT
research
04/25/2023

PUNR: Pre-training with User Behavior Modeling for News Recommendation

News recommendation aims to predict click behaviors based on user behavi...
research
07/24/2022

Incorporating Heterogeneous User Behaviors and Social Influences for Predictive Analysis

Behavior prediction based on historical behavioral data have practical r...
research
09/30/2021

USER: A Unified Information Search and Recommendation Model based on Integrated Behavior Sequence

Search and recommendation are the two most common approaches used by peo...
research
06/13/2022

Recommender Transformers with Behavior Pathways

Sequential recommendation requires the recommender to capture the evolvi...
research
12/26/2019

A Time Attention based Fraud Transaction Detection Framework

With online payment platforms being ubiquitous and important, fraud tran...
research
12/20/2019

ET-USB: Transformer-Based Sequential Behavior Modeling for Inbound Customer Service

Deep-Learning based models with attention mechanism has achieved excepti...
research
07/07/2020

Adversarial learning for product recommendation

Product recommendation can be considered as a problem in data fusion– es...

Please sign up or login with your details

Forgot password? Click here to reset