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International Journal of Business Intelligence and Data Mining
Inderscience Enterprises Ltd · United Kingdom · Est. 2005
ISSN1743-8195
SJR Q4✓ Scopus / SJR
5
/ 100
High Risk
Score Breakdown
✓ Scopus Q4+5
Total5
Journal Impact Factor
Not on record at PubScope. The Journal Impact Factor is published by Clarivate for Web of Science (JCR)–indexed journals.
SJR Score
0.15
H-Index
27
SNIP
0.235
Total Works
1,054
Total Citations
3,789
2yr Mean Citedness
0.24
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Aims & Scope✦ Compiled from public sources
The International Journal of Business Intelligence and Data Mining provides a forum for state-of-the-art developments and research in business intelligence, data analysis, and data mining. It covers intelligent data analysis for problem-solving in business modelling tasks.
AI-compiled from public web sources · verify on the publisher page
⚡ Speed vs Prestige
How does this journal balance review speed with impact level?
Based on the Think.Check.Submit framework by DOAJ, COPE & OASPA. All data from verified open sources.
Publication & Citation Trend
Articles published
Times cited
2019
2020
2021
2022
2023
2024
2025
2026
Source: OpenAlex · Note: citations accumulate over time so older years appear higher
SJR Quartile by Discipline
Scimago ranks this journal separately in each subject category — its quartile can differ by discipline.
Information Systems and ManagementQ4
Management Information SystemsQ4
Statistics, Probability and UncertaintyQ4
Subject Classification
Scopus Categories
Information Systems and ManagementStatistics, Probability and UncertaintyManagement Information Systems
Research Topics (OpenAlex)
Data Mining Algorithms and ApplicationsData Management and AlgorithmsText and Document Classification TechnologiesEducational Technology and AssessmentRecommender Systems and TechniquesRough Sets and Fuzzy LogicEducational Technology and PedagogyImbalanced Data Classification TechniquesBig Data and Business IntelligenceAdvanced Clustering Algorithms Research