Data di Pubblicazione:
2021
Abstract:
Multiple Instance Learning (MIL) is a variant of traditional supervised learning where
the main difference is in the nature of the learning examples. In fact, each example is
not represented by a single vector of features but by a set (called bag) of feature vectors
(called instances). The classification labels of the training bags are known whereas the
labels of the instances inside them are unknown. The task of MIL is to learn a model
that predicts the labels of the new incoming bags together the labels of the instances
inside them. In this work we tackle the MIL problem for the binary case by constructing
a polyhedral classifier on the basis of positive and negative training examples. In
particular, the idea is to generate a polyhedral separation surface characterized by a
finite number of hyperplanes such that, for each positive bag, at least one of its instances
is inside the polyhedron and all the instances of each negative bag are outside. We come
out with nonlinear nonconvex nonsmooth optimization problems of DC (Difference
of Convex) type that we solve by adapting the DCA algorithm. The results of our
implementation on a number of benchmark classification datasets are presented.
Tipologia CRIS:
04.02 Abstract in Atti di convegno
Keywords:
Multiple Instance Learning; Polyhedral separation; DC optimization
Elenco autori:
Astorino, Annabella
Link alla scheda completa: