How to compute RMSE on training set and validation set in LSTM regression?

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Now I'm trying to do seq2seq regression using LSTM. I can't understand the algorithm of RMSE. My input is a 100*1 cell, and evey cell is 2*100 double matrix. The output is a 100*1 cell, and every cell is 1*100 double vector. This means, numFeatures=2 and numResponses=1. I also set validation set by trainingOptions: 'ValidationData',{XValid,YValid}, XValid and YValid both are 100*1 cell. But what confuses me is how to compute RMSE on training set and validation set. Under my understanding, if my input is a 100*1 cell, then my output is also a 100*1 cell. Every cell of output is 1*100 double. So I don't know how to calculate the RMSE between two cells, I mean output and Yvalid. I think it will retrun a 100*1 cell, every cell is a number of the RMSE between two vector, but it returns just a number. Is the mean of every cell or other statistic?Or is there some other algorithm?

Risposte (1)

Taylor
Taylor il 15 Apr 2024
You'll want to look at the info object returned by trainnet.See this previous post for more info.

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