Modeling the Past and Future Contexts for Session-based Recommendation

06/11/2019
by   Yuan Fajie, et al.
0

Long session-based recommender systems have attacted much attention recently. For each user, they may create hundreds of click behaviors in short time. To learn long session item dependencies, previous sequential recommendation models resort either to data augmentation or a left-to-right autoregressive training approach. While effective, an obvious drawback is that future user behaviors are always mising during training. In this paper, we claim that users' future action signals can be exploited to boost the recommendation quality. To model both past and future contexts, we investigate three ways of augmentation techniques from both data and model perspectives. Moreover, we carefully design two general neural network architectures: a pretrained two-way neural network model and a deep contextualized model trained on a text gap-filling task. Experiments on four real-word datasets show that our proposed two-way neural network models can achieve competitive or even much better results. Empirical evidence confirms that modeling both past and future context is a promising way to offer better recommendation accuracy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/26/2022

Disentangling Past-Future Modeling in Sequential Recommendation via Dual Networks

Sequential recommendation (SR) plays an important role in personalized r...
research
05/21/2018

Party Matters: Enhancing Legislative Embeddings with Author Attributes for Vote Prediction

Predicting how Congressional legislators will vote is important for unde...
research
08/15/2018

A Simple but Hard-to-Beat Baseline for Session-based Recommendations

Convolutional Neural Networks (CNNs) models have been recently introduce...
research
03/07/2021

Hybrid Model with Time Modeling for Sequential Recommender Systems

Deep learning based methods have been used successfully in recommender s...
research
04/15/2019

Contextual Hybrid Session-based News Recommendation with Recurrent Neural Networks

Recommender systems help users deal with information overload by providi...
research
05/24/2023

Revenge of MLP in Sequential Recommendation

Sequential recommendation models sequences of historical user-item inter...
research
08/24/2023

Towards Communication-Efficient Model Updating for On-Device Session-Based Recommendation

On-device recommender systems recently have garnered increasing attentio...

Please sign up or login with your details

Forgot password? Click here to reset