Hi, there: The following question is more of statistics: assume i have 5 features in a classification, and I am wondering which methodology can help me identify which feature "contributes" the most to classify a specific sample? I knew some simple modeling like logistic regression probably can do it since it provides an explicit formulae for that. Any others? I tried to use lda{MASS} and posted the question last week but I did not get any response. So again, I re-phrase my question. Thanks. WEIWEI My previous questions are also attached for reference. hi, maybe I should re-phrase my question a bit: is there a way to get explicit formulae like Y ~ sum of CiXi from the model build by lda{MASS} to calculate $x (value) ? I assume scaling is the coeff and Xi is from test data and Y is $x called LD1. But I want to confirm this. ############## hi, assume val is the test data while m is lda model value by using CV=F x = predict(m, val) val2 = val[, 1:(ncol(val)-1)] # the last column is class label # col is sample, row is variable then I am wondering if x$x == (apply(val2*m$scaling), 2, sum) i.e., the scaling (is it coeff vector?) times val data and sum is the discrimant result $x? -- Weiwei Shi, Ph.D Research Scientist GeneGO, Inc. "Did you always know?" "No, I did not. But I believed..." ---Matrix III