I am trying to write semi-supervised outlier detection algorithm in data stream. I have a training data set which has normal and abnormal behavior of a system. My task is to detect the outliers in the stream of data produced by the system. For the purpose of simulating the data stream, I divided the data into batches.
B1(990,-), B2(106,-), B3(101,5), B4(106,-), B5(101,5) % where Batch_number(#normal, #abnormal)
B1 represent the training data (which includes normal data records only), while
B2,B3,B4,B5 are the testing batches. In
B5 there are abnormal data records. The normal data in the
B3-B5 is taken from
B1. My question is , for the semi-supervised learning, does that make a sense? and is it correct to take normal data from the