APPLICATION OF SUPERVISED LEARNING
MACHINE LEARNINGHARD QUESTIONS
Question
[CLICK ON ANY CHOICE TO KNOW THE RIGHT ANSWER]
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Suppose you have trained an anomaly detection system for fraud detection, and your system that flags anomalies when p(x) is less than , and you find on the cross-validation set that it is missing many fradulent transactions (i.e., failing to flag them as anomalies) . What should you do?
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Increase
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Decrease
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both a and b
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none of these
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Explanation:
Detailed explanation-1: -There are three main classes of anomaly detection techniques: unsupervised, semi-supervised, and supervised.
Detailed explanation-2: -Perhaps the most significant benefit of anomaly detection is the automation of KPI analysis. For most businesses, KPI analysis is still a manual task of sorting through all of their digital channel’s data across different dashboards.
There is 1 question to complete.