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On the Importance of Empirical Contradiction for Reliability Estimation of Intelligent Data Analysis Results
5
Zitationen
2
Autoren
2021
Jahr
Abstract
Some ways to apply intelligent data analysis (IDA) to improve the reliability of computer data analysis in medical diagnostics and decision making are discussed. The procedure of IDA results in constructive falsification (refutability and reliability checking) with respect to collected empirical data is proposed. The approach is illustrated by medical diagnostics and decision-making examples. The effectiveness and practical significance of the proposed approach is demonstrated by examples of diagnostics of human brain tumor pseudoprogression.
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