New Trends in Recommender System: AI Algorithms, Mathematical Models and New Directions

A special issue of Electronics (ISSN 2079-9292). This special issue belongs to the section "Artificial Intelligence".

Deadline for manuscript submissions: 15 December 2024 | Viewed by 793

Special Issue Editors


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Guest Editor
Department of Telecommunications, Computer Sciences and Electrical Engineering, Bydgoszcz University of Science and Technology, 85-796 Bydgoszcz, Poland
Interests: processing of signals and images; robotics; data communication systems; artificial intelligence; computer vision

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Guest Editor
VSB, Technical University of Ostrava, 708 00 Ostrava, Czech Republic
Interests: artificial intelligence; deep learning; information retrieval; signal processing
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Special Issue Information

Dear Colleagues,

Recommender systems and data mining are interdisciplinary fields intensively developed both in the area of new research methods and applications. A recommendation system is a search system in which the input query is a collection of user and context information, and the result is a ranked list of items. Recommendation (ranked) lists are generated based on the user’s preferences, the item’s characteristics, the user’s previous interactions with the item, and other additional information such as temporal and spatial data. Given a query, the task of the recommendation system is to find relevant items in the database and then rank the items based on specific goals.

The rapid development of artificial intelligence methods, computational intelligence methods, evolutionary methods, and data science has enabled their use in recommender systems to improve prediction accuracy and solve missing data problems.

This Special Issue reviews state-of-the-art artificial intelligence methods in recommender systems, including models, methods, and applications, and attempts to answer the question 'what are the trends in the use of recommender systems and research using machine learning algorithms’.

In this Special Issue, original research articles and reviews are welcome. Research areas may include (but are not limited to) the following:

- Machine learning algorithms in recommender systems;

- Deep learning technologies and multimodal data analysis;

- Trends in the use of recommender systems and research in the implementation of machine learning algorithms;

- Dimensionality reduction in recommender systems;

- Classifiers in recommender systems;

- Recommender systems for Internet of Things;

- Recommender systems with AI;

- Deep neural networks in recommender systems;

- CNN-based recommender systems;

- RNN-based recommender systems;

- Fuzzy techniques in recommender systems;

- Evolutionary algorithms in recommender systems;

- Computer vision in recommender systems;

- Privacy preserving and secure recommender systems;

- Blockchain and IoT-based recommender and cognitive systems.

We look forward to receiving your contributions.

Prof. Dr. Ryszard S. Choraś
Prof. Dr. Vaclav Snasel
Guest Editors

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Keywords

  • recommender systems
  • artificial intelligence
  • computational intelligence
  • deep learning
  • content-based filtering
  • collaborative filtering
  • fuzzy techniques

Published Papers (1 paper)

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Research

17 pages, 792 KiB  
Article
Multi-Channel Hypergraph Collaborative Filtering with Attribute Inference
by Yutong Jiang, Yuhan Gao, Yaoqi Sun, Shuai Wang and Chenggang Yan
Electronics 2024, 13(5), 903; https://doi.org/10.3390/electronics13050903 - 27 Feb 2024
Viewed by 518
Abstract
In the field of collaborative filtering, attribute information is often integrated to improve recommendations. However, challenges remain unaddressed. Firstly, existing data modeling methods often fall short of appropriately handling attribute information. Secondly, attribute data are often sparse and can potentially impact recommendation performance [...] Read more.
In the field of collaborative filtering, attribute information is often integrated to improve recommendations. However, challenges remain unaddressed. Firstly, existing data modeling methods often fall short of appropriately handling attribute information. Secondly, attribute data are often sparse and can potentially impact recommendation performance due to the challenge of incomplete correspondence between the attribute information and the recommendations. To tackle these challenges, we propose a hypergraph collaborative filtering with attribute inference (HCFA) framework, which segregates attribute and user behavior information into distinct channels and leverages hypergraphs to capture high-order correlations among vertices, offering a more natural approach to modeling. Furthermore, we introduce behavior-based attribute confidence (BAC) for assessing the reliability of inferred attributes concerning the corresponding behaviors and update the most credible portions to enhance recommendation quality. Extensive experiments conducted on three public benchmarks demonstrate the superiority of our model. It consistently outperforms other state-of-the-art approaches, with ablation experiments further confirming the effectiveness of our proposed method. Full article
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