Non linear discriminant function

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Document clustering
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E measure
Clustering
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Document frequency weighting
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Independence measurements
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124 example,in Figure 6 ...I x 1,x 2 I x 2,x 3 I x 2,x 4 I x 2,x 5 I x 5 x 6 is a maximum ...Once the dependence tree has been found the approximating distribution can be written down immediately in the form A 2 ...ti Prob xi 1 xj i 1 ri Prob xi 1 x j i 0 and r 1 Prob x 1 1 P xi xj i [ti [xi]1 ti [1][xi]][xj i []ri [xi]1 ri [1][xi]][1][xj i]then This is a non linear weighting function which will simplify to the one derived from A 1 when the variables are assumed to be independent,that is,when ti ri ...g x log P x w 1 log P x w 2 which now involves the calculation or estimation of twice as many parameters as in the linear case ...It is easier to see how g x combines differentweights for different terms if one looks at the weights contributed to g x for a given
118 Theorem is the best way of getting at it ...P x wi P x 1 wi P x 2 wi ...Later I shall show how this stringent assumption may be relaxed ...Let us now take the simplified form of P x wi and work out what the decision rule will look like ...pi Prob xi 1 w 1 qi Prob xi 1 w 2 ...In words pi qi is the probability that if the document is relevant non relevant that the i th index term will be present ...To appreciate how these expressions work,the reader should check that P 0,1,1,0,0,1 w 1 1 p 1 p 2 p 3 1 p 4 1 p 5 p 6 ...where the constants ai,bi and e are obvious ...