Learning English Grapheme Segmentation Using the Iterated Version Space Algorithm
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چکیده
Our unique approach for learning English grapheme segmen tation LE GS rules using the Iterated Version Space Algorithm IVSA is presented After de ning the problem and our representation for the instances and hypotheses we illustrate the LE GS approach by trac ing a speci c example Experimental results based on a ten fold testing methodology are given to show the performance of the LE GS learning system
منابع مشابه
The Iterated Version Space Algorithm
We present the Iterated Version Space Al gorithm IVSA which retains many advan tages of the Version Space Algorithm while handling disjunctive concepts and noise IVSA repeatedly generates hypotheses for regions of the concept space and combines these regional hypotheses to produce an overall concept hypothesis Experiments were conducted to learn English pronunci ation rules from word pronunciat...
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تاریخ انتشار 1999