Domain driven data mining
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Domain driven data mining is a data mining methodology for discovering actionable knowledge and deliver actionable insights from complex data and behaviors in a complex environment. It studies the corresponding foundations, frameworks, algorithms, models, architectures, and evaluation systems for actionable knowledge discovery.[1][2]
Domain driven data mining has attracted significant attention from both academic and industry. There was a workshop series on domain driven data mining during 2007-2014 with the IEEE International Conference on Data Mining and a special issue published by the IEEE Transactions on Knowledge and Data Engineering.[7] There are also various new research problems and challenges in the last decade, where the incorporation of domain knowledge into data mining processes and models, such as deep neural networks, graph embedding, text mining, and reinforcement learning, is critically important.[8][9]
Actionable knowledge
Actionable knowledge refers to the knowledge that can inform decision-making actions and be converted to decision-making actions.[5][10] The actionability of data mining and machine learning findings, also called knowledge actionability, refers to the satisfaction of both technical (statistical) and business-oriented evaluation metrics or measures in terms of objective [11][12] and/or subjective [13] perspectives. The research and innovation on actionable knowledge discovery can be deemed a paradigm shift from knowledge discovery from data to actionable knowledge discovery and delivery[14][15] by mining complex data for complex knowledge in either a multi-feature, multi-source, or multi-method scenario.[16]
Actionable insight
Actionable insight enables accurate and in-depth understanding of things or objects and their characteristics, events, stories, occurrences, patterns, exceptions, and evolution and dynamics hidden in the data world and corresponding decision-making actions on top of the insights. Actionable knowledge may disclose actionable insights.
References
- ISBN 978-1-4419-5737-5.
- S2CID 29503757.
- ^ Fayyad, U.; Piatetsky-Shapiro, G.; Smyth, P. (1996). "From Data Mining to Knowledge Discovery in Databases". AI Magazine. 17 (3): 37–54.
- S2CID 37284526.
- ^ S2CID 15928505.
- ^ Fayyad, U.; Smyth, P. (1996). "From Data Mining to Knowledge Discovery: An Overview". Advances in Knowledge Discovery and Data Mining, (U. Fayyad and P. Smyth, Eds.): 1–34.
- ^ "DDDM".
- ^ "International Workshop on Domain-driven Data Mining (DDDM)".
- ^ "International Journal of Data Science and Analytics".
- S2CID 18053232.
- ^ Hilderman, R.; Hamilton, H. (2000). "Applying Objective Interestingness Measures in Data Mining Systems". Pkdd2000: 432–439.
- ^ Freitas, A. (1998). "On Objective Measures of Rule Surprisingness". Proc. European Conf. Principles and Practice of Knowledge Discovery in Databases: 1–9.
- .
- ^ Longbing Cao, Yanchang Zhao, Huaifeng Zhang, Dan Luo, Chengqi Zhang. Flexible Frameworks for Actionable Knowledge Discovery, IEEE Trans. on Knowledge and Data Engineering, 22(9): 1299-1312, 2010
- ^ Longbing Cao. Actionable Knowledge Discovery and Delivery, WIREs Data Mining and Knowledge Discovery, 2(2): 149-163, 2012
- ^ Longbing Cao. Combined Mining: Analyzing Object and Pattern Relations for Discovering and Constructing Complex but Actionable Patterns, WIREs Data Mining and Knowledge Discovery, 3(2): 140-155, 2013