# ajn

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 Jan17 comment Multivariate normal density in Python? Fixed the bug in my code (thanks!) and updated my answer above Jan17 revised Multivariate normal density in Python? Dec3 awarded Teacher May20 answered Multivariate normal density in Python? Apr24 awarded Supporter Oct19 awarded Scholar Oct19 accepted Python left multiplication of of a matrix with inverse of a sparse matrix Oct14 comment Python left multiplication of of a matrix with inverse of a sparse matrix Good point, unfortunately my statement was incorrect :( S is merely symmetric, not diagonal. However, S has rather small dimensions compared to the others so I'm thinking that it might be worthwhile to just invert it as a dense matrix. But I would still like an answer to the general question, someone pointed out to me that the underlying code for spsolve seems to handle the general problem and that it is just the scipy wrapper to unecessary restrict the parameters. Oct14 revised Python left multiplication of of a matrix with inverse of a sparse matrix added 4 characters in body Oct14 revised Python left multiplication of of a matrix with inverse of a sparse matrix added 316 characters in body Oct14 comment Python left multiplication of of a matrix with inverse of a sparse matrix If there isn't any better method I will definitely try solving it by iterating over the columns, but I have a hunch it will not be so efficient. The dimensions of the matrices will typically be around P~10⁶x10^6, S~100x100, C=100x10⁶. P and S will be diagonal and C will only have one element per row. I will update my question with this information aswell. Oct14 awarded Editor Oct14 revised Python left multiplication of of a matrix with inverse of a sparse matrix added 425 characters in body Oct14 comment Python left multiplication of of a matrix with inverse of a sparse matrix I disagree, in matlab the solution to my question would simply be: K = P*(S' \ C)' or equivantly K = P*(C / S) The fact that C is a matrix instead of a vector does not change the reasoning, you do along the lines of what you are saying by solving once for each column in C. My question is about the fact that spsolve restrict me to C being a vector whereas in Matlab it can also be done for matrices. Depending on the dimension of the matrices this can still be significantly more efficient then calculating the actual inverse. Oct14 awarded Student Oct14 asked Python left multiplication of of a matrix with inverse of a sparse matrix