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Dealing with Randomness and Concept Drift in Large Datasets
2021
Data
Data-driven solutions to societal challenges continue to bring new dimensions to our daily lives. For example, while good-quality education is a well-acknowledged foundation of sustainable development, innovation and creativity, variations in student attainment and general performance remain commonplace. Developing data -driven solutions hinges on two fronts-technical and application. The former relates to the modelling perspective, where two of the major challenges are the impact of data
doi:10.3390/data6070077
fatcat:pvyzuwbu2rbcpjggea53w4lsgu