Enhancing Cross-Market Recommendation System with Graph Isomorphism Networks: A Novel Approach to Personalized User Experience
- URL: http://arxiv.org/abs/2409.07850v1
- Date: Thu, 12 Sep 2024 08:53:11 GMT
- Title: Enhancing Cross-Market Recommendation System with Graph Isomorphism Networks: A Novel Approach to Personalized User Experience
- Authors: Sümeyye Öztürk, Ahmed Burak Ercan, Resul Tugay, Şule Gündüz Öğüdücü,
- Abstract summary: We propose the CrossGR model, which utilizes Graph Isomorphism Networks (GINs) to improve cross-market recommendation systems.
The CrossGR model is adaptable and accurate, making it well-suited for handling the complexities of cross-market recommendation tasks.
Our findings suggest that GINs represent a promising direction for CMRs, paving the way for more sophisticated, personalized, and context-aware recommendation systems.
- Score: 0.24999074238880487
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In today's world of globalized commerce, cross-market recommendation systems (CMRs) are crucial for providing personalized user experiences across diverse market segments. However, traditional recommendation algorithms have difficulties dealing with market specificity and data sparsity, especially in new or emerging markets. In this paper, we propose the CrossGR model, which utilizes Graph Isomorphism Networks (GINs) to improve CMR systems. It outperforms existing benchmarks in NDCG@10 and HR@10 metrics, demonstrating its adaptability and accuracy in handling diverse market segments. The CrossGR model is adaptable and accurate, making it well-suited for handling the complexities of cross-market recommendation tasks. Its robustness is demonstrated by consistent performance across different evaluation timeframes, indicating its potential to cater to evolving market trends and user preferences. Our findings suggest that GINs represent a promising direction for CMRs, paving the way for more sophisticated, personalized, and context-aware recommendation systems in the dynamic landscape of global e-commerce.
Related papers
- Efficient and Robust Regularized Federated Recommendation [52.24782464815489]
The recommender system (RSRS) addresses both user preference and privacy concerns.
We propose a novel method that incorporates non-uniform gradient descent to improve communication efficiency.
RFRecF's superior robustness compared to diverse baselines.
arXiv Detail & Related papers (2024-11-03T12:10:20Z) - MCI-GRU: Stock Prediction Model Based on Multi-Head Cross-Attention and Improved GRU [15.232546605091818]
This paper proposes a stock prediction model, MCI-GRU, based on a multi-head cross-attention mechanism and an improved GRU.
Experiments on four main stock markets show that the proposed method outperforms SOTA techniques across multiple metrics.
arXiv Detail & Related papers (2024-09-25T14:37:49Z) - LLM-enhanced Reranking in Recommender Systems [49.969932092129305]
Reranking is a critical component in recommender systems, playing an essential role in refining the output of recommendation algorithms.
We introduce a comprehensive reranking framework, designed to seamlessly integrate various reranking criteria.
A customizable input mechanism is also integrated, enabling the tuning of the language model's focus to meet specific reranking needs.
arXiv Detail & Related papers (2024-06-18T09:29:18Z) - Revolutionizing Retail Analytics: Advancing Inventory and Customer Insight with AI [0.0]
This paper introduces an innovative approach utilizing cutting-edge machine learning technologies.
We aim to create an advanced smart retail analytics system (SRAS), leveraging these technologies to enhance retail efficiency and customer engagement.
arXiv Detail & Related papers (2024-02-24T11:03:01Z) - Self-supervised Graph-based Point-of-interest Recommendation [66.58064122520747]
Next Point-of-Interest (POI) recommendation has become a prominent component in location-based e-commerce.
We propose a Self-supervised Graph-enhanced POI Recommender (S2GRec) for next POI recommendation.
In particular, we devise a novel Graph-enhanced Self-attentive layer to incorporate the collaborative signals from both global transition graph and local trajectory graphs.
arXiv Detail & Related papers (2022-10-22T17:29:34Z) - Federated Domain Generalization for Image Recognition via Cross-Client
Style Transfer [60.70102634957392]
Domain generalization (DG) has been a hot topic in image recognition, with a goal to train a general model that can perform well on unseen domains.
In this paper, we propose a novel domain generalization method for image recognition through cross-client style transfer (CCST) without exchanging data samples.
Our method outperforms recent SOTA DG methods on two DG benchmarks (PACS, OfficeHome) and a large-scale medical image dataset (Camelyon17) in the FL setting.
arXiv Detail & Related papers (2022-10-03T13:15:55Z) - PARSRec: Explainable Personalized Attention-fused Recurrent Sequential
Recommendation Using Session Partial Actions [0.5801044612920815]
We propose an architecture that relies on common patterns as well as individual behaviors to tailor its recommendations for each person.
Our empirical results on Nielsen Consumer Panel dataset indicate that the proposed approach achieves up to 27.9% performance improvement.
arXiv Detail & Related papers (2022-09-16T12:07:43Z) - Ordinal Graph Gamma Belief Network for Social Recommender Systems [54.9487910312535]
We develop a hierarchical Bayesian model termed ordinal graph factor analysis (OGFA), which jointly models user-item and user-user interactions.
OGFA not only achieves good recommendation performance, but also extracts interpretable latent factors corresponding to representative user preferences.
We extend OGFA to ordinal graph gamma belief network, which is a multi-stochastic-layer deep probabilistic model.
arXiv Detail & Related papers (2022-09-12T09:19:22Z) - Cross-Market Product Recommendation [22.385250578972084]
We study the problem of recommending relevant products to users in resource-scarce markets by leveraging data from similar, richer in resource auxiliary markets.
We introduce and formalize the problem of cross-market product recommendation, i.e., market adaptation.
We conduct extensive experiments studying the impact of market adaptation on different pairs of markets.
arXiv Detail & Related papers (2021-09-13T12:53:45Z) - MARS-Gym: A Gym framework to model, train, and evaluate Recommender
Systems for Marketplaces [51.123916699062384]
MARS-Gym is an open-source framework to build and evaluate Reinforcement Learning agents for recommendations in marketplaces.
We provide the implementation of a diverse set of baseline agents, with a metrics-driven analysis of them in the Trivago marketplace dataset.
We expect to bridge the gap between academic research and production systems, as well as to facilitate the design of new algorithms and applications.
arXiv Detail & Related papers (2020-09-30T16:39:31Z)
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.