None DOI Creative Commons
Abiola Akinnubi,

Jeremiah Ajiboye

Journal of Robotics and Automation Research, Journal Year: 2023, Volume and Issue: 4(2)

Published: July 3, 2023

This survey discusses the concept of knowledge graphs, including their construction, extraction, and applications.Various tools such as Zotero, Web Science, Google Scholar, EndNote, VosViewer are used to analyze visualize collected data.A Boolean query mechanism ensures gathered material is relevant study.The discussion includes studies on relation extraction using graph neural networks, application graphs in biomedical research, use embedding healthcare.These highlight growing importance managing representing complex information.Notable discussed include role connecting related medical information, technology healthcare, potential benefits limitations data analysis.This paper provides valuable insights into information how they can help provide new various fields.It suggests future directions for research this area, highlighting continued exploration innovation realize fully.

Language: Английский

EASC: An exception-aware semantic compression framework for real-world knowledge graphs DOI
Sihang Jiang,

Feng Jian-chuan,

Chao Wang

et al.

Knowledge-Based Systems, Journal Year: 2023, Volume and Issue: 278, P. 110900 - 110900

Published: Aug. 11, 2023

Language: Английский

Citations

3

Knowledge Graph: A Survey DOI Open Access
Abiola Akinnubi,

Jeremiah Ajiboye

Journal of Robotics and Automation Research, Journal Year: 2023, Volume and Issue: 4(2)

Published: June 23, 2023

This survey discusses the concept of knowledge graphs, including their construction, extraction, and applications. Various tools such as Zotero, Web Science, Google Scholar, EndNote, VosViewer are used to analyze visualize collected data. A Boolean query mechanism ensures gathered material is relevant study. The discussion includes studies on relation extraction using graph neural networks, application graphs in biomedical research, use embedding healthcare. These highlight growing importance managing representing complex information. Notable discussed include role connecting related medical information, technology healthcare, potential benefits limitations data analysis. paper provides valuable insights into information how they can help provide new various fields. It suggests future directions for research this area, highlighting continued exploration innovation realize fully

Language: Английский

Citations

2

Explicable recommendation model based on a time‐assisted knowledge graph and many‐objective optimization algorithm DOI
Rui Zheng,

Linjie Wu,

Xingjuan Cai

et al.

Concurrency and Computation Practice and Experience, Journal Year: 2024, Volume and Issue: 36(21)

Published: June 25, 2024

Summary Existing research on recommender systems primarily focuses improving a single objective, such as prediction accuracy, often ignoring other crucial aspects of recommendation performance temporal factor, user satisfaction, and acceptance. To solve this problem, we proposed an explicable model using many‐objective optimization time‐assisted knowledge graph, which utilizes interaction times within the graph to prioritize recommending recently frequently visited items is further optimized algorithm. In model, weight actions at different first determined through time decay function. Additionally, if clicks same item again, current action's set one. This strategy prioritizes recent items, reflecting interests preferences better. Next, created used create list potential recommendations. Embedding methods obtain vectors for entities relations in path. These vectors, combined with actions, quantify explainability Optimizing rest many objective algorithms while focusing user's frequent visits item. Finally, outcomes study indicate that, compared recommended methods, our considering improved average accuracy by 11%, diversity 1%, 21% Useraction1 data set. Results sets also that maintains diversity, novelty enhancing explainability.

Language: Английский

Citations

0

Knowledge Graph: A Survey DOI Creative Commons
Abiola Akinnubi,

Jeremiah Ajiboye

Published: May 15, 2023

<p>This survey discusses the concept of knowledge graphs, including their construction, extraction, and applications. Various tools such as Zotero, Web Science, Google Scholar, EndNote, VosViewer are used to analyze visualize collected data. A Boolean query mechanism ensures gathered material is relevant study. The discussion includes studies on relation extraction using graph neural networks, application graphs in biomedical research, use embedding healthcare. These highlight growing importance managing representing complex information. Notable discussed include role connecting related medical information, technology healthcare, potential benefits limitations data analysis. This paper provides valuable insights into information how they can help provide new various fields. It suggests future directions for research this area, highlighting continued exploration innovation realize fully.</p>

Language: Английский

Citations

1

Knowledge Graph: A Survey DOI Open Access
Abiola Akinnubi,

Jeremiah Ajiboye

Published: May 15, 2023

This survey discusses the concept of knowledge graphs, including their construction, extraction, and applications. Various tools such as Zotero, Web Science, Google Scholar, EndNote, VosViewer are used to analyze visualize collected data. A Boolean query mechanism ensures gathered material is relevant study. The discussion includes studies on relation extraction using graph neural networks, application graphs in biomedical research, use embedding healthcare. These highlight growing importance managing representing complex information. Notable discussed include role connecting related medical information, technology healthcare, potential benefits limitations data analysis. paper provides valuable insights into information how they can help provide new various fields. It suggests future directions for research this area, highlighting continued exploration innovation realize fully.

Language: Английский

Citations

1

A transformer framework for generating context-aware knowledge graph paths DOI
Pei-Chi Lo, Ee‐Peng Lim

Applied Intelligence, Journal Year: 2023, Volume and Issue: 53(20), P. 23740 - 23767

Published: July 14, 2023

Language: Английский

Citations

1

Research on Knowledge Graph-Based Recommender Systems DOI

Shuyan Hou,

Dongqian Wei

Published: July 7, 2023

A Knowledge Graph-based Recommendation System (KG-RS) employs a knowledge graph to represent data and generate precise recommendations for customers based on the given information. In this paper, we first investigate various filtering techniques commonly utilized in recommendation systems analyze distinctions between Heterogeneous Information Networks (HINs) Graphs (KGs). Then, classify models their embedding methods, loss functions, entity representations, integration of additional Also, classified extra they used facilitate research. Our research demonstrates that item information is consistently included graphs, while user not. Additionally, KG-RSs are progressing by incorporating more advanced into process, rather than complicating itself.

Language: Английский

Citations

1

Preserving node similarity adversarial learning graph representation with graph neural network DOI Creative Commons
Shangying Yang, Yinglong Zhang,

E Jiawei

et al.

Engineering Reports, Journal Year: 2024, Volume and Issue: unknown

Published: Jan. 28, 2024

Abstract In recent years, graph neural networks (GNNs) have showcased a strong ability to learn representations and been widely used in various practical applications. However, many currently proposed GNN‐based representation learning methods do not retain neighbor‐based node similarity well, this structural information is crucial cases. To address issue, drawing inspiration from generative adversarial (GANs), we propose PNS‐AGNN (i.e., Preserving Node Similarity Adversarial Graph Neural Networks), novel framework for acquiring representations, which can preserve of the original efficiently extract nonlinear features graph. Specifically, new positive sample allocation strategy based on index, where generator generate vector that satisfy through training. addition, also adopt an improved GNN as discriminator, utilizes structure recursive neighborhood aggregation maintain local feature nodes, thereby enhancing representation's ability. Finally, experimentally demonstrate significantly improves tasks, including link prediction, classification, visualization.

Language: Английский

Citations

0

Focus on user micro multi-behavioral states: Time-sensitive User Behavior Conversion Prediction and Multi-view Reinforcement Learning Based Recommendation Approach DOI
Shanshan Wan, Shuyue Yang,

Zebin Fu

et al.

Information Processing & Management, Journal Year: 2024, Volume and Issue: 62(2), P. 103967 - 103967

Published: Nov. 20, 2024

Language: Английский

Citations

0

Knowledge Graph: A Survey DOI Creative Commons
Abiola Akinnubi, Jeremiah Ajiboye

Published: May 15, 2023

<p>This survey discusses the concept of knowledge graphs, including their construction, extraction, and applications. Various tools such as Zotero, Web Science, Google Scholar, EndNote, VosViewer are used to analyze visualize collected data. A Boolean query mechanism ensures gathered material is relevant study. The discussion includes studies on relation extraction using graph neural networks, application graphs in biomedical research, use embedding healthcare. These highlight growing importance managing representing complex information. Notable discussed include role connecting related medical information, technology healthcare, potential benefits limitations data analysis. This paper provides valuable insights into information how they can help provide new various fields. It suggests future directions for research this area, highlighting continued exploration innovation realize fully.</p>

Language: Английский

Citations

0