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stock<-structure(list(week = c(1L, 2L, 5L, 2L, 3L, 4L, 3L, 2L, 1L, 5L, 
                       1L, 3L, 2L, 4L, 3L, 4L, 2L, 3L, 1L, 4L, 3L), close_price = c(774000L, 
                                                                                    852000L, 906000L, 870000L, 1049000L, 941000L, 876000L, 874000L, 
                                                                                    909000L, 966000L, 977000L, 950000L, 990000L, 948000L, 1079000L, 
                                                                                    NA, 913000L, 932000L, 1020000L, 872000L, 916000L), vol = c(669L, 
                                                                                                                                               872L, 3115L, 2693L, 575L, 619L, 646L, 1760L, 419L, 587L, 8922L, 
                                                                                                                                               366L, 764L, 6628L, 1116L, NA, 572L, 592L, 971L, 1181L, 1148L), 
              obv = c(1344430L, 1304600L, 1325188L, 1322764L, 1365797L, 
                      1355525L, 1308385L, 1308738L, 1353999L, 1364475L, 1326557L, 
                      1357572L, 1362492L, 1322403L, 1364273L, NA, 1354571L, 1354804L, 
                      1363256L, 1315441L, 1327927L)), .Names = c("week", "close_price", 
                                                                 "vol", "obv"), row.names = c(16L, 337L, 245L, 277L, 193L, 109L, 
                                                                                              323L, 342L, 106L, 170L, 226L, 133L, 72L, 234L, 208L, 329L, 107L, 
                                                                                              103L, 71L, 284L, 253L), class = "data.frame") 

This is subset of data I have. I split the data, one for training and the other for testing.

obs<- sample(1:21, 21*0.5, replace=F)
tr.Nam<- stock[obs,]; st.Nam<- stock[-obs,]

Nam_nnet<-nnet(close_price~., data=tr.Nam, size=4, decay=5e-4)
p<-predict(Nam_nnet, st.Nam, type="raw")

By this nnet procedure, I expect "p" to predict close_price. However, the values of "p" are only "1"s or "Na"s.

What should I do to predict the close_price properly, with nnet?

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marked as duplicate by Joshua Ulrich, Didzis Elferts, Spacedman, Dirk Eddelbuettel, Ben Dec 31 '13 at 15:25

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

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1 Answer

By default, nnet uses logistic output units, i.e., tries to predict a binary variable. You want linear output units.

Nam_nnet <- nnet(
  close_price ~ ., 
  data = tr.Nam, 
  size = 4, decay = 5e-4, 
  linout = TRUE
p <- predict(Nam_nnet, st.Nam, type="raw")
plot( p, st.Nam$close_price )

However, the internal nodes are still logistic (and you probably want that, if you are using a neural network in the first place): since the values of the variables are very large, the nodes saturate, output a constant value, and the optimizer is stuck on a plateau...

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Now "p" has close_price values but the values are same. It does not good when the stock price prediction is always all time same. Please let me know how to make the predicted price differ day by day. –  user3027252 Dec 31 '13 at 12:08
The easiest is to transform the data: if most of the values are around 0, say between -2 and 2, the problem will disappear. –  Vincent Zoonekynd Dec 31 '13 at 12:29
after scale I have good values of p, thank you. However, I have another problem. plot( p, st.Nam$close_price ) This does not work. I got message Error in st.Nam$close_price : $ operator is invalid for atomic vectors –  user3027252 Dec 31 '13 at 13:02
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