Think about your problem- what are you trying to classify/predict, and how can it be best represented. Chances are that you don't want to predict the next raw EEG reading, so a time-series approach probably isn't critical.
Weka can only handle instances (rows of data) with a fixed set of attributes (features, values, or in other words, a vector of a predefined length). The possible types of attributes one can have are
nominal (e.g. "red","green","blue"),
numeric (any integer/floating point value),
string (mostly for text mining). and
date. There is no way to represent a vector of
raw signal as a single attribute. Here is the documentation: http://weka.wikispaces.com/ARFF+%28stable+version%29
That said, your instances could look like this:
num,class1,reading_1,reading_2,reading_3 ... reading_n,relaxed,bored
reading_1 is the first raw reading and
reading_n is the last one at the end of 5 minutes. This would be asking WEKA to predict your class based on the raw readings, and probably won't be very effective (because the readings may not line up with each other, and because this treats each reading separately, with no care for things like frequency or average which are relative).
Alternatively, you can do some pre-processing of the raw data so that it is useful for most machine learning algorithms in WEKA. In this case, you would need to decide on important features and then create them. A crude example could be:
Where you have calculated things like average and frequency of the data before putting it into an ARFF file. Then the algorithms have a much more informative picture of the dataset on which to base their predictions.
However, still another concern is what are you representing? Is the entire 5 minute sample the same class, or is the user
relaxed for part of it and
bored for part of it? If this is the case, you should probably have two samples: one for when the user is bored and one for when she is relaxed.