Using AUC and accuracy in evaluating learning algorithms
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Abstract
The area under the ROC (receiver operating characteristics) curve, or simply AUC, has been traditionally used in medical diagnosis since the 1970s. It has recently been proposed as an alternative single-number measure for evaluating the predictive ability of learning algorithms. However, no formal arguments were given as to why AUC should be preferred over accuracy. We establish formal criteria for comparing two different measures for learning algorithms and we show theoretically and empirically that AUC is a better measure (defined precisely) than accuracy. We then reevaluate well-established claims in machine learning based on accuracy using AUC and obtain interesting and surprising new results. For example,…
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2Topics & keywords
Topics
Keywords
- Machine learning
- Computer science
- Artificial intelligence
- Naive Bayes classifier
- Decision tree
- Measure (data warehouse)
- Receiver operating characteristic
- Algorithm
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