par Lopes, Miguel ;Bontempi, Gianluca
Référence Lecture notes in computer science, 8725 LNAI, PART 2, page (322-337)
Publication Publié, 2014
Article révisé par les pairs
Résumé : Precision recall curves (pr-curves) and the associated area under (AUPRC) are commonly used to assess the accuracy of information retrieval (IR) algorithms. An informative baseline is random selection. The associated probability distribution makes it possible to assess pr-curve significancy (as a p-value relative to the null of random). To our knowledge, no analytical expression of the null distribution of empirical pr-curves is available, and the only measure of significancy used in the literature relies on non-parametric Monte Carlo simulations. In this paper, we derive analytically the expected null pr-curve and AUPRC, for different interpolation strategies. The AUPRC variance is also derived, and we use it to propose a continuous approximation to the null AUPRC distribution, based on the beta distribution. Properties of the empirical pr-curve and common interpolation strategies are also discussed. © 2014 Springer-Verlag.