Concepedia

Concept

Knowledge Discovery

Parents

178.4K

Publications

13.6M

Citations

281.1K

Authors

17.5K

Institutions

Foundations of Knowledge Discovery

1964 - 1997

Knowledge Discovery in Databases (KDD) during 1964–1997 coalesced around scalable rule discovery and interpretable predictive modeling for large data stores. Data mining for association rules formed the backbone of KDD, complemented by supervised learning and decision-tree induction that emphasized interpretable models. Knowledge representation and reasoning frameworks, together with clustering and graph-based organization, provided organizing principles for knowledge capture and early scientometrics in this period.

Data mining for association rules forms the backbone of Knowledge Discovery in Databases (KDD), with rule mining algorithms and hierarchies enabling scalable pattern discovery across large datasets [4], [7], [8], [9], [12], [16], [17], [18].

Supervised learning and decision-tree induction underpin early data mining approaches within Knowledge Discovery in Databases (KDD), emphasizing interpretable rules and tree-based methodologies [1], [3], [6], [14].

Knowledge representation and reasoning frameworks provide the scaffolding for organizing and inferring knowledge, underpinning KDD approaches with attribute-oriented, reasoning-based, and knowledge graphs perspectives [5], [10], [12], [20].

Clustering, co-citation analysis, and graph-based organization highlight unsupervised structure discovery and scientometrics within knowledge discovery, showing early clustering methods and citation network analysis [13], [15], [19].

Constraint-Driven Web Knowledge Discovery

1998 - 2004

Cross-Modal Knowledge Discovery

2005 - 2011

Neural Knowledge Graph Reasoning

2012 - 2017

Graph-Augmented Knowledge Discovery

2018 - 2024