Title :
A parametric procedure for imperfectly supervised learning with unknown class probabilities (Corresp.)
fDate :
9/1/1974 12:00:00 AM
Abstract :
A computationally feasible parametric procedure for unsupervised learning has been given by Agrawala [1]. The procedure eliminates the computational difficulties associated with updating using a mixture density by making use of a probabilistic labeling scheme. Shanmugam [2] has given a similar parametric procedure using probabilistic labeling for the more general problem of imperfectly supervised learning. Both procedures assume known class probabilities. In this correspondence a computationally feasible parametric procedure using probabilistic labeling is given for imperfectly supervised learning when the class probabilities are among the unknown statistical parameters.
Keywords :
Learning procedures; Density functional theory; Density measurement; Equations; Extraterrestrial measurements; Labeling; Pattern recognition; Probability; Random variables; Supervised learning;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.1974.1055273