Repository: Freie Universität Berlin, Math Department

FELRec: Efficient Handling of Item Cold-Start With Dynamic Representation Learning in Recommender Systems

Weimann, K. and Conrad, T. O. F. (2024) FELRec: Efficient Handling of Item Cold-Start With Dynamic Representation Learning in Recommender Systems. International Journal of Data Science and Analytics, 19 (1).

Full text not available from this repository.

Official URL: https://doi.org/10.1007/s41060-024-00635-5

Abstract

Recommender systems suffer from the cold-start problem whenever a new user joins the platform or a new item is added to the catalog. To address item cold-start, we propose to replace the embedding layer in sequential recommenders with a dynamic storage that has no learnable weights and can keep an arbitrary number of representations. In this paper, we present FELRec, a large embedding network that refines the existing representations of users and items in a recursive manner, as new information becomes available. In contrast to similar approaches, our model represents new users and items without side information and time-consuming finetuning, instead it runs a single forward pass over a sequence of existing representations. During item cold-start, our method outperforms similar method by 29.50–47.45%. Further, our proposed model generalizes well to previously unseen datasets in zero-shot settings. The source code is publicly available.

Item Type:Article
Subjects:Mathematical and Computer Sciences > Artificial Intelligence
Mathematical and Computer Sciences > Artificial Intelligence > Knowledge Representation
Mathematical and Computer Sciences > Artificial Intelligence > Machine Learning
Divisions:Department of Mathematics and Computer Science > Institute of Mathematics
Department of Mathematics and Computer Science > Institute of Mathematics > Comp. Proteomics Group
ID Code:2790
Deposited By: Admin Administrator
Deposited On:04 Mar 2022 10:18
Last Modified:07 Nov 2024 12:17

Repository Staff Only: item control page