在此数据中
timeseries=structure(list(Data = structure(c(10L, 14L, 18L, 22L, 26L, 29L,
32L, 35L, 38L, 1L, 4L, 7L, 11L, 15L, 19L, 23L, 27L, 30L, 33L,
36L, 39L, 2L, 5L, 8L, 12L, 16L, 20L, 24L, 28L, 31L, 34L, 37L,
40L, 3L, 6L, 9L, 13L, 17L, 21L, 25L), .Label = c("01.01.2018",
"01.01.2019", "01.01.2020", "01.02.2018", "01.02.2019", "01.02.2020",
"01.03.2018", "01.03.2019", "01.03.2020", "01.04.2017", "01.04.2018",
"01.04.2019", "01.04.2020", "01.05.2017", "01.05.2018", "01.05.2019",
"01.05.2020", "01.06.2017", "01.06.2018", "01.06.2019", "01.06.2020",
"01.07.2017", "01.07.2018", "01.07.2019", "01.07.2020", "01.08.2017",
"01.08.2018", "01.08.2019", "01.09.2017", "01.09.2018", "01.09.2019",
"01.10.2017", "01.10.2018", "01.10.2019", "01.11.2017", "01.11.2018",
"01.11.2019", "01.12.2017", "01.12.2018", "01.12.2019"), class = "factor"),
client = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L,
1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L,
2L, 2L, 2L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L,
1L), .Label = c("Horns", "Kornev"), class = "factor"), stuff = structure(c(1L,
1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 3L, 3L, 3L, 3L, 3L,
3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 2L, 2L, 2L, 2L,
2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L), .Label = c("chickens",
"hooves", "Oysters"), class = "factor"), Sales = c(374L,
12L, 120L, 242L, 227L, 268L, 280L, 419L, 12L, 172L, 336L,
117L, 108L, 150L, 90L, 117L, 116L, 146L, 120L, 211L, 213L,
67L, 146L, 118L, 152L, 122L, 201L, 497L, 522L, 65L, 268L,
441L, 247L, 348L, 445L, 477L, 62L, 226L, 476L, 306L)), .Names = c("Data",
"client", "stuff", "Sales"), class = "data.frame", row.names = c(NA,
-40L))
按组创建预测
# first the grouping variable
timeseries$group <- paste0(timeseries$client,timeseries$stuff)
# determine all groups
groups <- unique(timeseries$group)
# find starting date per group and save them as a list of elements c('YEAR','Month')
timeseries$date <- as.Date(as.character(timeseries$Data), '%d.%m.%Y')
timeseries <- timeseries[order(timeseries$date),]
start_dates <- format(timeseries$date[match(groups, timeseries$group)], "%Y %m")
start_dates <- strsplit(start_dates, ' ')
# now the list
listed <- split(timeseries,timeseries$group)
str(listed)
# Edited the lapply funcion in order to consider the starting dates
# to have a smaller output, I post the str(listed)
library("forecast")
library("lubridate")
listed_ts <- lapply(seq_along(listed),
function(k) ts(listed[[k]][["Sales"]], start = as.integer(start_dates[[k]]), frequency = 12) )
listed_ts
listed_arima <- lapply(listed_ts,function(x) auto.arima(x,allowmean = F ))
#Now the forecast for each arima:
listed_forecast <- lapply(listed_arima,function(x) forecast(x,5) )
listed_forecast
do.call(rbind,listed_forecast)
lapply(listed_arima, fitted)
#As a side comment, note that the solution is equivalent to
lapply(listed_arima, function(x) fitted(x))
#For the same reason you may also use AIC Metrix
listed_arima <- lapply(listed_ts, auto.arima)
所以我想使用library("MLmetrics")
让我们检查一下帮助
?MAPE(y_pred, y_true)
y_true
是时间序列数据,y_pred
是lapply(listed_arima, fitted)
的结果
所以我这样做
MAPE(lapply(listed_arima, fitted), timeseries)
并得到错误
Error in Ops.data.frame(y_true, y_pred) : list of length 3 not meaningful
怎么了?为什么我不能使用来自库(“ MLmetric”)的此函数来计算MAPE度量?
如何为每个组计算MAPE?
所以作为输出我想要像我的例子一样的数据帧
如何获得此输出?
答案 0 :(得分:1)
您需要的是
mapply(MAPE, lapply(listed_arima, fitted), split(timeseries$Sales, timeseries$group))
# [1] 3.4659421 0.8926123 0.2577634
通过这种方式,我们将MAPE
应用于列表lapply(listed_arima, fitted)
和split(timeseries$Sales, timeseries$group)
的每对元素。
问题
MAPE(lapply(listed_arima, fitted), timeseries)
是lapply(listed_arima, fitted)
是一个列表,而MAPE
的第一个参数必须是向量,并且timeseries
是一个数据帧,而不是单个列。