Product discovery utilizing the semantic data model

被引:0
作者
Sarika Jain
机构
[1] National Institute of Technology Kurukshetra,Department of Computer Applications
来源
Multimedia Tools and Applications | 2023年 / 82卷
关键词
Knowledge graph; Ontology; Engineering equipment; Multimedia data; Product categorization; Product matching; Recommendation;
D O I
暂无
中图分类号
学科分类号
摘要
Most of the existing techniques to product discovery and recommendations rely on syntactic approaches, thus ignoring valuable and specific semantic information of the underlying standards during the process. The product data comes from different heterogeneous sources and formats (text and multimedia) giving rise to the problem of interoperability. Above all, due to the continuously increasing influx of data, the manual labeling is getting costlier. Integrating the descriptions of different products into a single representation requires organizing all the products across vendors in a single taxonomy. Practically relevant and quality product categorization standards are still limited in number; and that too in academic research projects where we can majorly see only prototypes as compared to industry. This work presents a cost-effective aggregator semantic web portal for product catalogues on the Data Web as a digital marketplace. The proposed architecture creates a knowledge graph of available products through the ETL (Extract-Transform-Load)) approach and stores the resulting RDF serializations in the Jena triple store. User input textual and multimedia specifications for certain products are matched against the available product categories to recommend matching products with price comparison across the vendors. The experimental results show that semantic intelligence technologies could provide the necessary data integration and interoperability for efficient product/service discovery including multimedia.
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收藏
页码:9173 / 9199
页数:26
相关论文
共 57 条
[1]  
Bhatt S(2020)Knowledge graph semantic enhancement of input data for improving AI IEEE Internet Comput 24 66-72
[2]  
Sheth A(2017)Ontop: answering SPARQL queries over relational databases Semant Web 8 471-487
[3]  
Shalin V(2020)Understanding the evolution of a scientific field by clustering and visualizing knowledge graphs J Inf Sci 48 71-89
[4]  
Zhao J(2013)Analyzing structural & temporal characteristics of keyword system in academic research articles Procedia Comput Sci 20 439-445
[5]  
Calvanese D(2020)ShExML: improving the usability of heterogeneous data mapping languages for first-time users PeerJ Comput Sci 6 5228-5235
[6]  
Cogrel B(2004)Finding scientific topics Proc Natl Acad Sci 101 1722-311
[7]  
Komla-Ebri S(2021)Developing a product knowledge graph of consumer electronics to manage sustainable product information Sustainability 13 103449-1024
[8]  
Kontchakov R(2021)Exploiting knowledge graphs in industrial products and services: a survey of key aspects, challenges, and future perspectives Comput Ind 129 296-262
[9]  
Lanti D(2014)FLOPPIES: a framework for large-scale ontology population of product information from tabular data in e-commerce stores Decis Support Syst 59 983-69
[10]  
Rezk M(2003)The PROMPT suite: interactive tools for ontology merging and mapping Int J Hum Comput Stud 59 256-437