If we take logarithms of probability the value returned is negative.Value is used in a matcher of information retrieval library which rejects the negative value hence i need to clamp the negative value to a positive value,so that matcher doesn't reject the document.

One approach could be add a random number say K to the probability

i.e return max(log( prob. + K) where K is a large constant or return max(log(K.Prob),0) where K is a large constant

Is there any better approach to clamp the negative log value to positive? which of these would be a better approach to follow?

In case we select any of the above approach, i feel very dizzy about how to select an appropriate K. I would be glad if someone can suggest how to select an appropriate large K ?

P.S it is important to use logarithm values as we are trying to implement model where we need to multiply probability but due to in-feasibility of architecture to support that we are summing the log of probability which is product of probability,hence using log value is important (taking antilog is not a workable approach) here

alwaysnegative, so negating it willalwaysmake it positive. The only downside I can think of is that, as a result,largevalues will indicate low probabilities,smallvalues will indicate high probabilities, so the meaning of your log-probabilities is reversed. But is that a problem? – jogojapan Apr 27 '12 at 2:09`K`

that is guaranteed to give you a positive number, since`log(x) -> -inf`

as`x -> 0`

. Unless of course you can be sure of the range of your probabilities... – kaveman Apr 27 '12 at 2:51