Dear List, I am trying to solve a problem by the neural network method(library: nnet). The problem is to express Weight in terms of Age , Sex and Height for twenty people. The data frame consists of 20 observations with four variables: Sex, Age, Height and Weight. Sex is treated as a factor, Age and Weight are variables normalized to unity, as usual. I wanted to construct a neural network, and so I ran the following code:>library(nnet) >net1<-nnet(Weight~Age+Sex+Height, size=2, linout=T,maxit=1000)I repeated this thirteen times. I used the default initial parameters unless otherwise noted. The result is as follows, where init and final mean initial and final RSS's, and NIT means the number of iterations before reaching convergence or noncovergence: Run# init NIT final 1 71991.1 30 995.1 2 70870.0 370 33.1 3 72755.8 <10 2134.3 4 69840.6 <10 2134.3 5 70368.8 190 39.7 6 70368.8 270 41.0 7 71101.2 190 39.7 8 71606.1 <10 2134.3 9 72076.1 <10 2134.3 10 72249.1 300 15.0 11 71424.1 <10 2134.3 12 68483.8 130 39.7 13 71435.9 >1000 4.6 As you can see, the result is far from stable. My question is: How can I reach a stable answer? .I know that initial parameters are crucially important in my case, and I must choose proper parameter values, but I do not know I can do that. My second question is related to the response analysis of this data. I do not know an effective method to evaluate the response to the variance of each explanatory variable. Is there such a function in the library, nnet? Such a function may help me reduce the number of the explanatory variables. I wonder if anyone could help me in such elementary questions. ---- It's elementary, Watson! I remain an obedient Watson, hoping for Holmes' wisdom. -- Yukihiro Ishii <yukiasais at ybb.ne.jp> 2-3-28?Tsurumaki-minami, Hadano 257-0002 Japan Tel +81 463 69 1922 Fax +81 463 69 1922
Dear List, I am trying to solve a problem by the neural network method(library: nnet). The problem is to express Weight in terms of Age , Sex and Height for twenty people. The data frame consists of 20 observations with four variables: Sex, Age, Height and Weight. Sex is treated as a factor, Age and Weight are variables normalized to unity, as usual. I wanted to construct a neural network, and so I ran the following code:>library(nnet) >net1<-nnet(Weight~Age+Sex+Height, size=2, linout=T,maxit=1000)I repeated this thirteen times. I used the default initial parameters unless otherwise noted. The result is as follows, where init and final mean initial and final RSS's, and NIT means the number of iterations before reaching convergence or noncovergence: Run# init NIT final 1 71991.1 30 995.1 2 70870.0 370 33.1 3 72755.8 <10 2134.3 4 69840.6 <10 2134.3 5 70368.8 190 39.7 6 70368.8 270 41.0 7 71101.2 190 39.7 8 71606.1 <10 2134.3 9 72076.1 <10 2134.3 10 72249.1 300 15.0 11 71424.1 <10 2134.3 12 68483.8 130 39.7 13 71435.9 >1000 4.6 As you can see, the result is far from stable. My question is: How can I reach a stable answer? .I know that initial parameters are crucially important in my case, and I must choose proper parameter values, but I do not know I can do that. My second question is related to the response analysis of this data. I do not know an effective method to evaluate the response to the variance of each explanatory variable. Is there such a function in the library, nnet? Such a function may help me reduce the number of the explanatory variables. I wonder if anyone could help me in such elementary questions. ---- It's elementary, Watson! I remain an obedient Watson, hoping for Holmes' wisdom. -- Yukihiro Ishii <yukiasais at ybb.ne.jp> 2-3-28?Tsurumaki-minami, Hadano 257-0002 Japan Tel +81 463 69 1922 Fax +81 463 69 1922
Dear List, I am trying to solve a problem by the neural network method(library: nnet). The problem is to express Weight in terms of Age , Sex and Height for twenty people(thius is an example given by Tanake in "Introduction to Neural Networks by NEUROSIM/L"(2003, in Japanese)).. The data frame consists of 20 observations with four variables: Sex, Age, Height and Weight. Sex is treated as a factor, Age and Weight are variables normalized to unity, as usual. I wanted to construct a neural network based on this data, and so I ran the following code:>library(nnet) >net1<-nnet(Weight~Age+Sex+Height, size=2, linout=T,maxit=1000)I repeated this thirteen times. I used the default initial parameters unless otherwise noted. The result is as follows, where init and final mean initial and final RSS's, and NIT means the number of iterations before reaching convergence or noncovergence: Run# init NIT final 1 71991.1 30 995.1 2 70870.0 370 33.1 3 72755.8 <10 2134.3 4 69840.6 <10 2134.3 5 70368.8 190 39.7 6 70368.8 270 41.0 7 71101.2 190 39.7 8 71606.1 <10 2134.3 9 72076.1 <10 2134.3 10 72249.1 300 15.0 11 71424.1 <10 2134.3 12 68483.8 130 39.7 13 71435.9 >1000 4.6 As you can see, the result is far from stable. My question is: How can I reach a stable answer? .I know that initial parameters are crucially important in my case, and I must choose proper parameter values, but I do not know how I can do that. My second question is related to the response analysis of this data. I do not know an effective method to evaluate the response to the variance of each explanatory variable. Tanabe(2003) mentions "Net Effect Ratio" defined by the average of dy/dx. Is there such a function in the library, nnet? Such a function may help me reduce the number of the explanatory variables. I wonder if anyone could help me in such elementary questions. ---- It's elementary, Watson! I remain an obedient Watson, hoping for Holmes' wisdom. -- Yukihiro Ishii <yukiasais at ybb.ne.jp> 2-3-28?Tsurumaki-minami, Hadano 257-0002 Japan Tel +81 463 69 1922 Fax +81 463 69 1922
Dear List, I am trying to solve a problem by the neural network method(library: nnet). The problem is to express Weight in terms of Age , Sex and Height for twenty people(thius is an example given by Tanake in "Introduction to Neural Networks by NEUROSIM/L"(2003, in Japanese)).. The data frame consists of 20 observations with four variables: Sex, Age, Height and Weight. Sex is treated as a factor, Age and Weight are variables normalized to unity, as usual. I wanted to construct a neural network based on this data, and so I ran the following code:>library(nnet) >net1<-nnet(Weight~Age+Sex+Height, size=2, linout=T,maxit=1000)I repeated this thirteen times. I used the default initial parameters unless otherwise noted. The result is as follows, where init and final mean initial and final RSS's, and NIT means the number of iterations before reaching convergence or noncovergence: Run# init NIT final 1 71991.1 30 995.1 2 70870.0 370 33.1 3 72755.8 <10 2134.3 4 69840.6 <10 2134.3 5 70368.8 190 39.7 6 70368.8 270 41.0 7 71101.2 190 39.7 8 71606.1 <10 2134.3 9 72076.1 <10 2134.3 10 72249.1 300 15.0 11 71424.1 <10 2134.3 12 68483.8 130 39.7 13 71435.9 >1000 4.6 As you can see, the result is far from stable. My question is: How can I reach a stable answer? .I know that initial parameters are crucially important in my case, and I must choose proper parameter values, but I do not know how I can do that. My second question is related to the response analysis of this data. I do not know an effective method to evaluate the response to the variance of each explanatory variable. Tanabe(2003) mentions "Net Effect Ratio" defined by the average of dy/dx. Is there such a function in the library, nnet? Such a function may help me reduce the number of the explanatory variables. I wonder if anyone could help me in such elementary questions. ---- It's elementary, Watson! I remain an obedient Watson, hoping for Holmes' wisdom. -- Yukihiro Ishii <yukiasais at ybb.ne.jp> 2-3-28?Tsurumaki-minami, Hadano 257-0002 Japan Tel +81 463 69 1922 Fax +81 463 69 1922