Tengo una tabla que la importo desde excel, en esta tabla hay 50 variable macroeconómicas trimestrales. Consigue convertir cada columna de la tabla en una serie-temporal:
Data_timeseries=data_macro_trim
for (step in 1: (ncol(data_macro_trim)-1))
{Data_timeseries[,step+1]=ts(data_macro_trim[,step+1], start=c(2005, 1), end=c(2017, 2), frequency=4)}
Ahora las series trimestrales las quiero convertir en mensuales con el método de denton-cholette, pero no consigo seleccionar las columnas (que son series temporales) para poder utilizarlo
for (step in 1: (ncol(data_macro_trim)-1))
{Denton_cho_monthly[,step+1]=predict(td(Data_timeseries[,step+1]~ 1, to = "monthly", method = "denton-cholette"))}
El error que me aparece es el siguiente:
Error in td(Data_timeseries[, step + 1] ~ 1, to = "monthly", method = "denton-cholette") : the left hand side of the formula must be either a time series or numeric.
¿Cómo seleccionaría la columna?
Muchas gracias
datos:> dput(Libro1)
structure(list(Date = c("Q1_2005", "Q2_2005", "Q3_2005", "Q4_2005",
"Q1_2006", "Q2_2006", "Q3_2006", "Q4_2006", "Q1_2007", "Q2_2007",
"Q3_2007", "Q4_2007", "Q1_2008", "Q2_2008", "Q3_2008", "Q4_2008",
"Q1_2009", "Q2_2009", "Q3_2009", "Q4_2009", "Q1_2010", "Q2_2010"
), GDP_yoy = c(3.4559, 3.6985, 3.6494, 4.0814, 4.1608, 4.1845,
4.2236, 4.1281, 4.0642, 3.8268, 3.6394, 3.5537, 2.9692, 2.1961,
0.6142, -1.257, -3.2735, -4.2626, -3.8356, -2.9138, -1.0422,
0.114), GDP__qoq = c(1.0092, 1.0189, 0.9522, 1.0401, 1.0863,
1.0419, 0.9901, 0.9475, 1.0242, 0.8114, 0.8079, 0.864, 0.454,
0.0545, -0.7525, -1.0119, -1.5974, -0.9687, -0.3098, -0.0631,
0.2995, 0.1884), GDP_level = c(93.4519, 94.4041, 95.303, 96.2942,
97.3402, 98.3544, 99.3282, 100.2693, 101.2963, 102.1182, 102.9432,
103.8326, 104.304, 104.3608, 103.5755, 102.5274, 100.8896, 99.9123,
99.6028, 99.54, 99.8381, 100.0262), Unemployment_a_p = c(10.17,
9.32, 8.41, 8.71, 9.03, 8.44, 8.08, 8.26, 8.42, 7.93, 8.01, 8.57,
9.6, 10.36, 11.23, 13.79, 17.24, 17.77, 17.75, 18.66, 19.84,
19.89), CPI_yoy = c(3.26, 3.22, 3.44, 3.55, 4.02, 3.95, 3.53,
2.59, 2.42, 2.39, 2.37, 3.96, 4.38, 4.6, 4.91, 2.45, 0.47, -0.68,
-1.07, 0.14, 1.09, 1.59), CPI_qoq = c(-0.39, 2.27, 0.1, 1.55,
0.05, 2.2, -0.29, 0.63, -0.11, 2.17, -0.32, 2.19, 0.29, 2.38,
-0.03, -0.2, -1.65, 1.22, -0.42, 1.03, -0.72, 1.71), CPI_level = c(81.93,
83.79, 83.88, 85.18, 85.22, 87.1, 86.84, 87.38, 87.29, 89.18,
88.9, 90.84, 91.11, 93.28, 93.26, 93.07, 91.54, 92.65, 92.26,
93.21, 92.54, 94.12), housing_prices_yoy = c(15.74, 13.91, 13.41,
12.75, 12, 10.81, 9.83, 9.11, 7.24, 5.78, 5.34, 4.77, 3.81, 2.01,
0.36, -3.21, -6.82, -8.34, -8.31, -6.25, -4.72, -3.75), housing_prices_qoq = c(4.17,
4, 1.64, 2.4, 3.47, 2.9, 0.74, 1.73, 1.69, 1.5, 0.33, 1.18, 0.76,
-0.27, -1.29, -2.43, -2.99, -1.9, -1.25, -0.24, -1.41, -0.9),
housing_prices_level = c(1685.4, 1752.8, 1781.5, 1824.3,
1887.6, 1942.3, 1956.7, 1990.5, 2024.2, 2054.5, 2061.2, 2085.5,
2101.4, 2095.7, 2068.7, 2018.5, 1958.1, 1920.9, 1896.8, 1892.3,
1865.7, 1848.9), `land_prices_(%_yoy)` = c(25.2336901244733,
12.4160777385159, 16.1976483022856, 8.06275524645181, -0.44862126310089,
1.53628541118229, 3.71423157096833, 6.49204864359214, 5.5825337010994,
8.58292701803267, 4.14763383884524, -2.65987350667606, -7.68268452424754,
-7.76193870277977, -9.8, -10.489838645634, -4.82263850139497,
-4.33505911444247, -7.54269265180689, -6.45239343468968,
-14.28391959799, -14.8949919224556), land_prices_qoq = c(4.5529901742752,
-1.57017442085315, 3.6697968645633, 1.2886109531931, -3.68194574368568,
0.392370148789856, 5.89350669452826, 4.0014617211767, -4.50456781447648,
3.2452719111046, 1.56806842480399, -2.79649122807019, -9.43219145940871,
3.15663611000399, -0.676145583803411, -3.53989185824872,
-3.69802798725651, 3.68509212730317, -4.00646203554119, -2.40238976775496,
-11.7601413975945, 2.94591821779275), land_prices_level = c(258.57,
254.51, 263.85, 267.25, 257.41, 258.42, 273.65, 284.6, 271.78,
280.6, 285, 277.03, 250.9, 258.82, 257.07, 247.97, 238.8,
247.6, 237.68, 231.97, 204.69, 210.72)), .Names = c("Date",
"GDP_yoy", "GDP__qoq", "GDP_level", "Unemployment_a_p", "CPI_yoy",
"CPI_qoq", "CPI_level", "housing_prices_yoy", "housing_prices_qoq",
"housing_prices_level", "land_prices_(%_yoy)", "land_prices_qoq",
"land_prices_level"), row.names = c(NA, -22L), class = c("tbl_df",
"tbl", "data.frame"))
Data_timeseries[,step+1]
no es una serie de tiempo, o al menos la función no lo interpreta como tal. ¿Podrías verificarlo conis.ts(Data_timeseries[,step+1])
? O como ya te dijeron, compartir una muestra de los datos condput(data_macro_trim)
.