Simple and effective neural-free soft-cluster embeddings for item cold-start recommendations

Author:

Puthiya Parambath Shameem A.,Chawla Sanjay

Abstract

AbstractRecommender systems are widely used in online platforms for easy exploration of personalized content. The best available recommendation algorithms are based on using the observed preference information among collaborating entities. A significant challenge in recommender system continues to be item cold-start recommendation: how to effectively recommend items with no observed or past preference information. Here we propose a two-stage algorithm based on soft clustering to provide an efficient solution to this problem. The crux of our approach lies in representing the items as soft-cluster embeddings in the space spanned by the side-information associated with the items. Though many item embedding approaches have been proposed for item cold-start recommendations in the past—and simple as they might appear—to the best of our knowledge, the approach based on soft-cluster embeddings has not been proposed in the research literature. Our experimental results on four benchmark datasets conclusively demonstrate that the proposed algorithm makes accurate recommendations in item cold-start settings compared to the state-of-the-art algorithms according to commonly used ranking metrics like Normalized Discounted Cumulative Gain (NDCG) and Mean Average Precision (MAP). The performance of our proposed algorithm on the MovieLens 20M dataset clearly demonstrates the scalability aspect of our algorithm compared to other popular algorithms. We also propose the metric Cold Items Precision (CIP) to quantify the ability of a system to recommend cold-start items. CIP can be used in conjunction with relevance ranking metrics like NDCG and MAP to measure the effectiveness of the cold-start recommendation algorithm.

Funder

Qatar Computing Research Institute

Publisher

Springer Science and Business Media LLC

Subject

Computer Networks and Communications,Computer Science Applications,Information Systems

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Cold-Start Product Recommendation Method Based on GAE;Journal of Computing and Electronic Information Management;2024-07-29

2. FAGRec: Alleviating data sparsity in POI recommendations via the feature-aware graph learning;Electronic Research Archive;2024

3. Knowledge-Based Commercial Real Estate Recommender System;Learning and Analytics in Intelligent Systems;2024

4. Cold-Start Next-Item Recommendation by User-Item Matching and Auto-Encoders;IEEE Transactions on Services Computing;2023-07-01

5. Addressing the Cold-Start Problem in Recommender Systems Based on Frequent Patterns;Algorithms;2023-03-27

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