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nrow(d2)
[1] 64
length(d2$Num_Total_Claim_Paid)
[1] 64

library(Hmisc)
x1 = d2$Num_Total_Claim_Paid
y1 = Lag(x1, 1)
model = lm(x1~y1)

d12 -- is the testing data, d2 -- training data
Why does the predict function give 64 values when my testing data has only 20 records?

z1 = predict(model, data=d12$Num_Total_Claim_Paid)
> nrow(d12)
[1] 20

> z1
       2        3        4        5        6        7        8        9 
18051.38 18095.54 18005.88 18034.30 17814.71 18007.76 17699.48 17923.12 
      10       11       12       13       14       15       16       17 
18134.99 16087.87 17825.61 17684.27 17722.53 17795.74 18096.78 18092.70 
      18       19       20       21       22       23       24       25 
18056.10 18004.02 17939.25 17887.13 17857.43 17767.99 17888.76 17917.96 
      26       27       28       29       30       31       32       33 
17906.99 17835.10 17917.26 17771.78 17816.55 17780.27 17806.06 17753.23 
      34       35       36       37       38       39       40       41 
17742.49 17744.13 17755.45 17748.61 17755.94 17778.96 17799.05 17763.44 
      42       43       44       45       46       47       48       49 
17841.45 17863.04 17895.03 17837.61 17931.96 17912.40 17965.40 17928.19 
      50       51       52       53       54       55       56       57 
17942.17 17902.39 17882.73 17813.61 17815.88 17800.53 17764.41 17766.52 
      58       59       60       61       62       63       64 
17752.50 17785.25 17745.46 17761.51 17512.62 17968.70 17776.21 

"newdata" instead of "data" in the second argument in predict.lm

 z1 = predict(model, newdata=d12$Num_Total_Claim_Paid)
Error in eval(predvars, data, env) : 
  numeric 'envir' arg not of length one
 z1 = predict(model, newdata=as.data.frame(d12$Num_Total_Claim_Paid))
Warning message:
'newdata' had 20 rows but variable(s) found have 64 rows 
> z1
       1        2        3        4        5        6        7        8 
      NA 18051.38 18095.54 18005.88 18034.30 17814.71 18007.76 17699.48 
       9       10       11       12       13       14       15       16 
17923.12 18134.99 16087.87 17825.61 17684.27 17722.53 17795.74 18096.78 
      17       18       19       20       21       22       23       24 
18092.70 18056.10 18004.02 17939.25 17887.13 17857.43 17767.99 17888.76 
      25       26       27       28       29       30       31       32 
17917.96 17906.99 17835.10 17917.26 17771.78 17816.55 17780.27 17806.06 
      33       34       35       36       37       38       39       40 
17753.23 17742.49 17744.13 17755.45 17748.61 17755.94 17778.96 17799.05 
      41       42       43       44       45       46       47       48 
17763.44 17841.45 17863.04 17895.03 17837.61 17931.96 17912.40 17965.40 
      49       50       51       52       53       54       55       56 
17928.19 17942.17 17902.39 17882.73 17813.61 17815.88 17800.53 17764.41 
      57       58       59       60       61       62       63       64 
17766.52 17752.50 17785.25 17745.46 17761.51 17512.62 17968.70 17776.21 

I still get 64 values instead of 20. Need some help on this

Thanks

share|improve this question
2  
the name of the second argument should be newdata in predict.lm(). –  rcs Sep 17 '13 at 7:48
    
@rcs - it is still the same issue even after changing the second argument to newdata. –  user1946217 Sep 17 '13 at 8:19
1  
Try predict(model, newdata=data.frame(y1=d12$Num_Total_Claim_Paid)). –  rcs Sep 17 '13 at 9:01
3  
The predictor variable in the data.frame passed to newdata (and you need to pass a data.frame not a vector as in your code) must have the same name as the predictor used in the model. –  Roland Sep 17 '13 at 9:01
    
As @Roland commented, all the names have to match. What you're actually seeing returned is the input values, as predict.lm defaults to its input values when the "new data" argument is invalid. –  Carl Witthoft Sep 17 '13 at 11:39

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