首页 > 解决方案 > 无法取消嵌套具有不同列类型的列表数据框

问题描述

我从包装在 R 包中的 API 中提取一些道路交通数据。我正在使用列表数据框来控制多组记录的下载。

# install.packages(webTRISr)
library(webTRISr)
library(tidyverse)

sites <- c(5745, 6345)
start_date = '01112017'
end_date = '31122017'

road_reports <- data_frame(sites, start_date, end_date) %>% 
  mutate(data = purrr::pmap(list(sites, start_date, end_date), webTRISr::webtris_report, report_type = "daily"))

当我看到unnest结果...

road_reports %>% 
  unnest(data)
# Error: No common type for `..1$data$Site Name` <character> and `..2$data$Site Name` <double>.

这是因为“站点名称”列在 API 的一次调用中是一个字符,但在另一个调用中是一个双精度字符。

从这个tidyr已经关闭的问题(https://github.com/tidyverse/tidyr/issues/658)我认为这被认为是一个错误并已在tidyrv1.0.0 中排序。

有什么想法可以解决吗?这个 SO answer的解决方案给出了同样的错误。

我尝试传递一个ptype参数来unnest()强制数据类型,但得到一个有损转换错误,即:

ptype <- data_frame('Site Name'= character(),
                'Report Date' = as.POSIXct(character(), tz = "UTC"),
                'Time Period Ending' = hms::as_hms(character()),
                'Time Interval' = double(),
                '0 - 520 cm' = double(),
                '521 - 660 cm' = double(),
                '661 - 1160 cm' = double(),
                '1160+ cm' = double(),
                '0 - 10 mph' = logical(),
                '11 - 15 mph' = logical(),
                '16 - 20 mph' = logical(),
                '21 - 25 mph' = logical(),
                '26 - 30 mph' = logical(),
                '31 - 35 mph' = logical(),
                '36 - 40 mph' = logical(),
                '41 - 45 mph' = logical(),
                '46 - 50 mph' = logical(),
                '51 - 55 mph' = logical(),
                '56 - 60 mph' = logical(),
                '61 - 70 mph' = logical(),
                '71 - 80 mph' = logical(),
                '80+ mph' = logical(),
                'Avg mph' = double(),
                'Total Volume' = double()
                )

road_reports %>% 
  unnest(data, ptype = ptype)

#Error: Lossy cast from <data.frame<data:data.frame< Site Name : character Report Date : datetime<UTC> Time Period Ending: time Time Interval : double
.
.
.

标签: rtidyrunnest

解决方案


一种选择是转换为通用类型,然后执行 ,然后unnest使用type.convert

library(purrr)
library(dplyr)
road_reports %>% 
    mutate(data = map(data, ~ .x %>% 
              mutate_all(as.character))) %>% 
    unnest(data) %>%
    type.convert
    # type.convert(., as.is = TRUE) # to avoid getting factor columns
# A tibble: 11,232 x 27
#   sites start_date end_date `Site Name` `Report Date` `Time Period En… `Time Interval` `0 - 520 cm` `521 - 660 cm` `661 - 1160 cm` `1160+ cm`
#   <int>      <int>    <int> <fct>       <fct>         <fct>                      <int>        <int>          <int>           <int>      <int>
# 1  5745    1112017 31122017 M1/5170L    2017-11-01    00:14:59                       0           NA             NA              NA         NA
# 2  5745    1112017 31122017 M1/5170L    2017-11-01    00:29:59                       1           NA             NA              NA         NA
# 3  5745    1112017 31122017 M1/5170L    2017-11-01    00:44:59                       2           NA             NA              NA         NA
# 4  5745    1112017 31122017 M1/5170L    2017-11-01    00:59:59                       3           NA             NA              NA         NA
# 5  5745    1112017 31122017 M1/5170L    2017-11-01    01:14:59                       4           NA             NA              NA         NA
# 6  5745    1112017 31122017 M1/5170L    2017-11-01    01:29:59                       5           NA             NA              NA         NA
# 7  5745    1112017 31122017 M1/5170L    2017-11-01    01:44:59                       6           NA             NA              NA         NA
# 8  5745    1112017 31122017 M1/5170L    2017-11-01    01:59:59                       7           NA             NA              NA         NA
# 9  5745    1112017 31122017 M1/5170L    2017-11-01    02:14:59                       8           NA             NA              NA         NA
#10  5745    1112017 31122017 M1/5170L    2017-11-01    02:29:59                       9           NA             NA              NA         NA
# … with 11,222 more rows, and 16 more variables: `0 - 10 mph` <int>, `11 - 15 mph` <int>, `16 - 20 mph` <int>, `21 - 25 mph` <int>, `26 - 30
#   mph` <int>, `31 - 35 mph` <int>, `36 - 40 mph` <int>, `41 - 45 mph` <int>, `46 - 50 mph` <int>, `51 - 55 mph` <int>, `56 - 60 mph` <int>, `61 -
#   70 mph` <int>, `71 - 80 mph` <int>, `80+ mph` <int>, `Avg mph` <int>, `Total Volume` <int>

或使用type_convert来自readr


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