Improving Implicit Feedback-Based Recommendation through Multi-Behavior Alignment

05/09/2023
by   Xin Xin, et al.
0

Recommender systems that learn from implicit feedback often use large volumes of a single type of implicit user feedback, such as clicks, to enhance the prediction of sparse target behavior such as purchases. Using multiple types of implicit user feedback for such target behavior prediction purposes is still an open question. Existing studies that attempted to learn from multiple types of user behavior often fail to: (i) learn universal and accurate user preferences from different behavioral data distributions, and (ii) overcome the noise and bias in observed implicit user feedback. To address the above problems, we propose multi-behavior alignment (MBA), a novel recommendation framework that learns from implicit feedback by using multiple types of behavioral data. We conjecture that multiple types of behavior from the same user (e.g., clicks and purchases) should reflect similar preferences of that user. To this end, we regard the underlying universal user preferences as a latent variable. The variable is inferred by maximizing the likelihood of multiple observed behavioral data distributions and, at the same time, minimizing the Kullback-Leibler divergence (KL-divergence) between user models learned from auxiliary behavior (such as clicks or views) and the target behavior separately. MBA infers universal user preferences from multi-behavior data and performs data denoising to enable effective knowledge transfer. We conduct experiments on three datasets, including a dataset collected from an operational e-commerce platform. Empirical results demonstrate the effectiveness of our proposed method in utilizing multiple types of behavioral data to enhance the prediction of the target behavior.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/09/2022

Denoising Neural Network for News Recommendation with Positive and Negative Implicit Feedback

News recommendation is different from movie or e-commercial recommendati...
research
09/21/2018

Neural Multi-Task Recommendation from Multi-Behavior Data

Most existing recommender systems leverage user behavior data of one typ...
research
08/03/2022

Coarse-to-Fine Knowledge-Enhanced Multi-Interest Learning Framework for Multi-Behavior Recommendation

Multi-types of behaviors (e.g., clicking, adding to cart, purchasing, et...
research
08/19/2023

Time-aligned Exposure-enhanced Model for Click-Through Rate Prediction

Click-Through Rate (CTR) prediction, crucial in applications like recomm...
research
07/12/2021

Denoising User-aware Memory Network for Recommendation

For better user satisfaction and business effectiveness, more and more a...
research
05/11/2023

Automated Data Denoising for Recommendation

In real-world scenarios, most platforms collect both large-scale, natura...
research
02/11/2023

Your Favorite Gameplay Speaks Volumes about You: Predicting User Behavior and Hexad Type

In recent years, the gamification research community has widely and freq...

Please sign up or login with your details

Forgot password? Click here to reset