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Neyman-Pearson Tests and ROC curves

Neyman-Pearson Tests and ROC curves. ECE 7251: Spring 2004 Lecture 21 3/3/04. Prof. Aaron D. Lanterman School of Electrical & Computer Engineering Georgia Institute of Technology AL: 404-385-2548 <lanterma@ece.gatech.edu>. The Setup. Parametric data models No prior on hypotheses

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Neyman-Pearson Tests and ROC curves

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  1. Neyman-Pearson Tests and ROC curves ECE 7251: Spring 2004 Lecture 21 3/3/04 Prof. Aaron D. Lanterman School of Electrical & Computer Engineering Georgia Institute of Technology AL: 404-385-2548 <lanterma@ece.gatech.edu>

  2. The Setup • Parametric data models • No prior on hypotheses • Goal as usually stated: design test which maximizes (equivalently, minimizes ) • under the constraint • This lecture covers the case of simple • hypotheses; composite hypotheses are much more complicated and will be covered later

  3. Lagrange Multiplier Approach (1)

  4. To minimize f, set • Again we see the likelihood ratio! Lagrange Multiplier Approach (2)

  5. The Constraint • If we increase , PFA goes down • and PM goes up • If we decrease , PFA goes up and PM goes down • Hence, to minimize PM, choose  so that PFAis as big as possible under the constraint

  6. Solving for the Threshold • Mission: Find the  which satisfies • Warning: we’ve been implicitly assuming PFA is a continuous function of  (we’ll return to this issue later)

  7. Receiver Operating Characteristic • Plot PD vs. PFA as we sweep the threshold • Ex: ROC curve for Gaussian hypotheses, equal var., different means (graph from Van Trees Vol. I, p. 38)

  8. MinMax Lines on ROC Curves • Recall MinMax tests equate conditional risks: • MinMax point is intersection of ROC curve with the line (graph from Van Trees Vol. I, p. 45)

  9. Example: Poisson Data (1) • Suppose we collect one data point and want to determine:

  10. We have Example: Poisson Data (2) • Note y can only take integer values, so we may as well write whereis an integer

  11. ROC Curve for Poisson Test • Only certain points on the ROC graph are achievable using a normal LRT (graph from Van Trees Vol. I, p. 42)

  12. Randomization Fills in the Gaps • Randomly choose between two adjacent LRT tests • Only needed since data took discrete values; probabilities of error were not continuous functions of the threshold (graph from Van Trees Vol. I, p. 43)

  13. Properties of ROC Curves • ROC curves should lie above the PD=PFA line • A test is unbiased if its PDis at least as big as its PFA, i.e. PD PFA • Note Neyman-Pearson LRT gives an unbiased test • ROC curves should be concave downward • Slope of the ROC curve at a particular point equals the value of the threshold required to achieve the PD and PFA at that point

  14. We want to show this = ROC Property: Threshold=Slope (♣)

  15. Showing That Thing We Want to Show • Define

  16. (♣) More on Showing That Thing

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