Suppose I have a feature matrix $F = [f_1^T,f_2^T,...,f_m^T]$ whereby $f_j^T \in \mathbb R^{n_t \times 1}$ is the $j$th column vector of $F$ ($n_t$ is the number of different events/trials and $m$ is the total number of features per trial). All trials are labelled with classlabel $\omega = \{1,2\}$.
Therefore, in simpler words, each row of $F$ contains the features of a particular trial whose label is known.
My problem is this...I am trying to make use of Mutual Information to select the best features possible. The notation I have shown so far is all from a particular paper and it suggests that I need to calculate the mutual information of each feature $f_j$ with the class label $\omega =\{1,2\}$ as follows:
$I(f_j;w)$ $\forall $ $j=1,2...m$
Does this make sense? If so, does this mean i am computing the mutual information of the first feature of each trial with their corresponding classlabel, of the second feature of each trial with their corresponding classlabel etc...? How many weights will I finally end up with? Because then I would like to sort them in descending order and choose the best k features.
Just in case, a snapshot of the part of the paper I am talking about is this: http://img547.imageshack.us/img547/8531/82104489.png
I wasn't able to attach the whole paper.
Thanks a lot for your help!