Patent ID: 7152029

Claim:
A method for generating an enlarged corpus of training entries for a particular application, given a set of k labels and an initial corpus of training m entries, where each of said entries includes at least a data portion, comprising the steps of: for each label l of said k labels, creating an associated rule that specifies one or more conditions that said data portion of an applied entry x must meet in order for said rule to reach a conclusion that said label l forms an attachment to said entry x, and with a weight ηp(x,l), where η is a positive number representing a measure of confidence in said rule, and p(x,l) is a probability measure, between 0 and 1, inclusively, that the rule assigns to the said conclusion; creating an augmented corpus of m training entries, where each entry i in said augmented corpus is created from data portion of entry i in said initial corpus of training entries, i=1,2, . . . m, with each label l of said k labels forming an attachment to said entry i weight ηp(x i ,l) when conditions of said rule for label l are met, and a weight 1−ηp(x i ,l) where said conditions of said rule for label l are not met; or forming a non-attachment to said entry i weight 1−ηp(x i ,l) when conditions of said rule for label l are met, and a weight ηp(x i ,l) where said conditions of said rule for label l are not met; and combining said augmented corpus of m training entries with said initial corpus of training m entries to form said enlarged corpus having 2m training entries.