Learning Distributions by Their Density Levels: A Paradigm for Learning without a Teacher

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We propose a mathematical model for learning the high-density areas of an unknown distribution from (unlabeled) random points drawn according to this distribution. While this type of a learning task has not been previously addressed in the computational learnability literature, we believe that this it a rather basic problem that appears in many practical learning scenarios. From a statistical theory standpoint, our model may be viewed as a restricted instance of the fundamental issue of inferring information about a probability distribution from the random samples it generates. From a computational learning angle, what we propose is a few framework of unsupervised concept learning. The examples provided to the learner in our model are not labeled (and are not necessarily all positive or all negative). The only information about their membership is indirectly disclosed to the student through the sampling distribution. We investigate the basic features of the proposed model and provide lower and upper bounds on the sample complexity of such learning tasks. We prove that classes whose VC-dimension is finite are learnable in a very strong sense, while on the other hand,ε-covering numbers of a concept class impose lower bounds on the sample size needed for learning in our models. One direction of the proof involves a reduction of the density-level learnability to PAC learning with respect to fixed distributions (as well as some fundamental statistical lower bounds), while the sufficiency condition is proved through the introduction of a generic learning algorithm.

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论文评审过程:Received 1 September 1996, Accepted 5 February 1997, Available online 25 May 2002.

论文官网地址:https://doi.org/10.1006/jcss.1997.1507