Compositions of Variant Experts for Integrating Short-Term and Long-Term Preferences
- URL: http://arxiv.org/abs/2506.23170v1
- Date: Sun, 29 Jun 2025 10:09:33 GMT
- Title: Compositions of Variant Experts for Integrating Short-Term and Long-Term Preferences
- Authors: Jaime Hieu Do, Trung-Hoang Le, Hady W. Lauw,
- Abstract summary: We propose a framework that combines short- and long-term preferences to enhance recommendation performance.<n>This novel framework dynamically integrates short- and long-term preferences through the use of different specialized recommendation models.
- Score: 22.769456275892477
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the online digital realm, recommendation systems are ubiquitous and play a crucial role in enhancing user experience. These systems leverage user preferences to provide personalized recommendations, thereby helping users navigate through the paradox of choice. This work focuses on personalized sequential recommendation, where the system considers not only a user's immediate, evolving session context, but also their cumulative historical behavior to provide highly relevant and timely recommendations. Through an empirical study conducted on diverse real-world datasets, we have observed and quantified the existence and impact of both short-term (immediate and transient) and long-term (enduring and stable) preferences on users' historical interactions. Building on these insights, we propose a framework that combines short- and long-term preferences to enhance recommendation performance, namely Compositions of Variant Experts (CoVE). This novel framework dynamically integrates short- and long-term preferences through the use of different specialized recommendation models (i.e., experts). Extensive experiments showcase the effectiveness of the proposed methods and ablation studies further investigate the impact of variant expert types.
Related papers
- Multi-agents based User Values Mining for Recommendation [52.26100802380767]
We propose a zero-shot multi-LLM collaborative framework for effective and accurate user value extraction.<n>We apply text summarization techniques to condense item content while preserving essential meaning.<n>To mitigate hallucinations, we introduce two specialized agent roles: evaluators and supervisors.
arXiv Detail & Related papers (2025-05-02T04:01:31Z) - Uncertain Multi-Objective Recommendation via Orthogonal Meta-Learning Enhanced Bayesian Optimization [30.031396809114625]
We introduce a novel framework that categorizes RS autonomy into five distinct levels, ranging from basic rule-based accuracy-driven systems to behavior-aware, uncertain multi-objective RSs.<n>We propose an approach that dynamically identifies and optimize multiple objectives based on individual user preferences, fostering more ethical and intelligent user-centric recommendations.
arXiv Detail & Related papers (2025-02-18T08:10:09Z) - Interactive Visualization Recommendation with Hier-SUCB [52.11209329270573]
We propose an interactive personalized visualization recommendation (PVisRec) system that learns on user feedback from previous interactions.<n>For more interactive and accurate recommendations, we propose Hier-SUCB, a contextual semi-bandit in the PVisRec setting.
arXiv Detail & Related papers (2025-02-05T17:14:45Z) - Reason4Rec: Large Language Models for Recommendation with Deliberative User Preference Alignment [69.11529841118671]
We propose a new Deliberative Recommendation task, which incorporates explicit reasoning about user preferences as an additional alignment goal.<n>We then introduce the Reasoning-powered Recommender framework for deliberative user preference alignment.
arXiv Detail & Related papers (2025-02-04T07:17:54Z) - Beyond Item Dissimilarities: Diversifying by Intent in Recommender Systems [20.04619904064599]
We develop a probabilistic intent-based whole-page diversification framework for the final stage of a recommender system.<n>We experiment with the intent diversification framework on YouTube, the world's largest video recommendation platform.
arXiv Detail & Related papers (2024-05-20T18:52:33Z) - Dynamic Embeddings for Interaction Prediction [2.5758502140236024]
In recommender systems (RSs), predicting the next item that a user interacts with is critical for user retention.
Recent studies have shown the effectiveness of modeling the mutual interactions between users and items using separate user and item embeddings.
We propose a novel method called DeePRed that addresses some of their limitations.
arXiv Detail & Related papers (2020-11-10T16:04:46Z) - Simultaneous Relevance and Diversity: A New Recommendation Inference
Approach [81.44167398308979]
We propose a new approach, which extends the general collaborative filtering (CF) by introducing a new way of CF inference, negative-to-positive.
Our approach is applicable to a wide range of recommendation scenarios/use-cases at various sophistication levels.
Our analysis and experiments on public datasets and real-world production data show that our approach outperforms existing methods on relevance and diversity simultaneously.
arXiv Detail & Related papers (2020-09-27T22:20:12Z) - Long-tail Session-based Recommendation [7.832914615902803]
We propose a novel network architecture, namely TailNet, to improve long-tail recommendation performance.
A novel is proposed and applied in TailNet to determine user preference between two types of items, so as to softly adjust and personalize recommendations.
arXiv Detail & Related papers (2020-07-24T03:36:35Z) - MRIF: Multi-resolution Interest Fusion for Recommendation [0.0]
This paper presents a multi-resolution interest fusion model (MRIF) that takes both properties of users' interests into consideration.
The proposed model is capable to capture the dynamic changes in users' interests at different temporal-ranges, and provides an effective way to combine a group of multi-resolution user interests to make predictions.
arXiv Detail & Related papers (2020-07-08T02:32:15Z) - Reward Constrained Interactive Recommendation with Natural Language
Feedback [158.8095688415973]
We propose a novel constraint-augmented reinforcement learning (RL) framework to efficiently incorporate user preferences over time.
Specifically, we leverage a discriminator to detect recommendations violating user historical preference.
Our proposed framework is general and is further extended to the task of constrained text generation.
arXiv Detail & Related papers (2020-05-04T16:23:34Z) - A Bayesian Approach to Conversational Recommendation Systems [60.12942570608859]
We present a conversational recommendation system based on a Bayesian approach.
A case study based on the application of this approach to emphstagend.com, an online platform for booking entertainers, is discussed.
arXiv Detail & Related papers (2020-02-12T15:59:31Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.