Neural Network Regression Score
古いコメントを表示
Hey!
So, I'm a little confused about the reported performance of my algorithm that uses the matlab neural network toolbox.
After training/testing with my dataset, I get a great Mean Square Error performance value, and a reasonably high R value on the regression plot (R = ~0.88).
However, when I look at the actual mapping of target and predicted values, it's not quite right. See this plot:
The diagonal dotted line is obviously the ideal output, and the black circles (and black line showing line of best fit) is my actual output. As you can see, all my outputs are negative and not on the diagonal line. However, there does seem to be a decent correlation between the target and actual output scores, hence the decent R value.
Am I just not mapping/scaling the output values correctly? Any tips or insight into this?
採用された回答
その他の回答 (1 件)
Greg Heath
2014 年 9 月 2 日
You say you get a great MSE value however
R^2 = 1-MSE/MSE00 = 0.77
where
MSE00 = mean(var(target',1))
Therefore, your model only accounts for 77% of the mean target variance.
The regression plot looks like the R=0.88 refers to the dark black line and not the line y=t.
Hard to say more without seeing your code.
1 件のコメント
Greg Heath
2014 年 9 月 21 日
Note that
0.88^2 ~ 0.77
カテゴリ
ヘルプ センター および File Exchange で Deep Learning Toolbox についてさらに検索
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!