# Vector similarity

I have vectors of same length consisting of 1 and 0. I am trying to find out how similar they are. So far I am using hamming distance that I calculate sum of one vector then sum of second vector and the difference between this is the difference of the days. With 1 and 0 it works pretty well.

My problem is that it doesn't reflect in any way where is the difference in the vectors and what is the variance of the error. I have thought of counting of how many 1 been misplaced to 1 of the next vector and how many 0 have been misplaced. It gives little bit more of information but still doesn't tell anything about the variance of the error.

The vectors are used to represent occupancy of house in time, with every 1 indicating that house is occupied and 0 that it is not. From this I am trying to predict how next day will look.

Any ideas?

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So you have "categorical data" and are looking for "similarity measures" - this is a good overview citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.158.3340 –  Roger Rowland Apr 30 '13 at 15:15
This is a question about statistics, not programming. Try a math forum. For effective predictions, you'll find that comparing pairs of vectors won't get you anywhere. You need to find trends across sets of vectors. There are well-known ways to approach this. –  Gene Apr 30 '13 at 15:15
do you have any good sources where I could read about these approaches? –  user1306283 Apr 30 '13 at 15:49