Mehmet Eren Ahsen, Robert Vogel, et al.
JMLR
Binary classification is one of the central problems in machine-learning research and, as such, investigations of its general statistical properties are of interest. We studied the ranking statistics of items in binary classification problems and observed that there is a formal and surprising relationship between the probability of a sample belonging to one of the two classes and the Fermi–Dirac distribution determining the probability that a fermion occupies a given single-particle quantum state in a physical system of noninteracting fermions. Using this equivalence, it is possible to compute a calibrated probabilistic output for binary classifiers. We show that the area under the receiver operating characteristics curve (AUC) in a classification problem is related to the temperature of an equivalent physical system. In a similar manner, the optimal decision threshold between the two classes is associated with the chemical potential of an equivalent physical system. Using our framework, we also derive a closed-form expression to calculate the variance for the AUC of a classifier. Finally, we introduce FiDEL (Fermi–Dirac-based ensemble learning), an ensemble learning algorithm that uses the calibrated nature of the classifier’s output probability to combine possibly very different classifiers.
Mehmet Eren Ahsen, Robert Vogel, et al.
JMLR
Zhan Zhang, Yegin Genc, et al.
Journal of Medical Systems
Mehmet Eren Ahsen, Yoojin Chun, et al.
BCB 2020
Mehmet Eren Ahsen, Mathukumalli Vidyasagar
ACHA