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Main Authors: Collins, Liam, Kumar, Bhuvesh, Ju, Clark Mingxuan, Zhao, Tong, Loveland, Donald, Neves, Leonardo, Shah, Neil
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.17820
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author Collins, Liam
Kumar, Bhuvesh
Ju, Clark Mingxuan
Zhao, Tong
Loveland, Donald
Neves, Leonardo
Shah, Neil
author_facet Collins, Liam
Kumar, Bhuvesh
Ju, Clark Mingxuan
Zhao, Tong
Loveland, Donald
Neves, Leonardo
Shah, Neil
contents Modern Sequential Recommendation (SR) models commonly utilize modality features to represent items, motivated in large part by recent advancements in language and vision modeling. To do so, several works completely replace ID embeddings with modality embeddings, claiming that modality embeddings render ID embeddings unnecessary because they can match or even exceed ID embedding performance. On the other hand, many works jointly utilize ID and modality features, but posit that complex fusion strategies, such as multi-stage training and/or intricate alignment architectures, are necessary for this joint utilization. However, underlying both these lines of work is a lack of understanding of the complementarity of ID and modality features. In this work, we address this gap by studying the complementarity of ID- and text-based SR models. We show that these models do learn complementary signals, meaning that either should provide performance gain when used properly alongside the other. Motivated by this, we propose a new SR method that preserves ID-text complementarity through independent model training, then harnesses it through a simple ensembling strategy. Despite this method's simplicity, we show it outperforms several competitive SR baselines, implying that both ID and text features are necessary to achieve state-of-the-art SR performance but complex fusion architectures are not.
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record_format arxiv
spellingShingle Exploiting ID-Text Complementarity via Ensembling for Sequential Recommendation
Collins, Liam
Kumar, Bhuvesh
Ju, Clark Mingxuan
Zhao, Tong
Loveland, Donald
Neves, Leonardo
Shah, Neil
Machine Learning
Modern Sequential Recommendation (SR) models commonly utilize modality features to represent items, motivated in large part by recent advancements in language and vision modeling. To do so, several works completely replace ID embeddings with modality embeddings, claiming that modality embeddings render ID embeddings unnecessary because they can match or even exceed ID embedding performance. On the other hand, many works jointly utilize ID and modality features, but posit that complex fusion strategies, such as multi-stage training and/or intricate alignment architectures, are necessary for this joint utilization. However, underlying both these lines of work is a lack of understanding of the complementarity of ID and modality features. In this work, we address this gap by studying the complementarity of ID- and text-based SR models. We show that these models do learn complementary signals, meaning that either should provide performance gain when used properly alongside the other. Motivated by this, we propose a new SR method that preserves ID-text complementarity through independent model training, then harnesses it through a simple ensembling strategy. Despite this method's simplicity, we show it outperforms several competitive SR baselines, implying that both ID and text features are necessary to achieve state-of-the-art SR performance but complex fusion architectures are not.
title Exploiting ID-Text Complementarity via Ensembling for Sequential Recommendation
topic Machine Learning
url https://arxiv.org/abs/2512.17820