# R - fit new data to Ets models

I need to fit a new vector to a previous Ets model without evaluate another time the parameters. For this purpose exist the model parameter of ets function.

model: It is also possible for the model to be equal to the output from a previous call to ets. In this case, the same model is fitted to y without re-estimating any parameters.

I don't understand why if the vector is the same of the previous execution the output is different. How can i get the same result?

Example:

tmp_x_1 [1] 22 50 37 19 25 31 23 12 10 34 23 19 22 20 11 21 20 6 10 16 9 [22] 23 20 34 16 24 31 62 27 11 36 21 30 36 25 18 86 17 39 24 14 54 [43] 18 36 28 16 44 17 11 26 28 44 19 8 51 28 14 19 63 52 41 53 38 [64] 28 47 88 19 74 56 38 66 36 68 93 62 27 32 37 41 37 40 71 20 17 [85] 30 18 17 87 32 40 12 47 72 11 34 18 25 19 22 39 24 32 32 15 12 [106] 27 19 11 37 17 12 17 37 35 19 11 31 20 10 13 30 11 11 20 15 7 [127] 31 13 24 6 19 9 3 8 6 1 3 26 8 7 6 12 23 9 9 18 5 [148] 1 3 9 9 5 22 22 11 28 14 10 24 15 24 33 14 37 14 84 145 91 [169] 52 21 61 10 10 32 29 20 28 43 24 22 28 40 20 14 13 41 24 15 31 [190] 5 22 33 37 2 34 31 32 2 22 30 54 18 28 17 25 25 37 23 15 11 [211] 21 28 20 39 24 33 27 30 31 9 27 31 12 25 10 29 1 6 6 37 1 [232] 27 52 48 33 27 55 68 53 69 33 101 39 34 55 41 22 41 45

ETS <- ets(ts(tmp_x_1, frequency=1),ic="aic")

summary(ETS)

ETS(M,A,N)

Call:
ets(y = ts(tmp_x_1, frequency = 1), ic = "aic")

Smoothing parameters:
alpha = 0.2432
beta  = 1e-04

Initial states:
l = 37.9625
b = 0.7106

sigma:  0.5908

AIC     AICc      BIC
2787.545 2787.709 2801.615

Training set error measures:
ME     RMSE    MAE       MPE     MAPE      MASE       ACF1
Training set -2.654641 18.22777 13.399 -83.84249 104.7498 0.8067377 0.03035755

ETS <- ets(ts(tmp_x_1, frequency=1),ic="aic",model=ETS)

summary(ETS)

ETS(M,A,N)

Call:
ets(y = ts(tmp_x_1, frequency = 1), model = ETS, ic = "aic")

Smoothing parameters:
alpha = 0.2432
beta  = 1e-04

Initial states:
l = 24.4151
b = 0.7094

sigma:  0.592

AIC     AICc      BIC
2781.344 2781.393 2788.379

Training set error measures:
ME     RMSE      MAE       MPE    MAPE      MASE       ACF1
Training set -2.447278 18.19555 13.31933 -83.05161 104.252 0.8019408 0.03161332
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