时间序列-绘制R中的平滑趋势线

时间序列-绘制R中的平滑趋势线,r,ggplot2,time-series,R,Ggplot2,Time Series,我正在努力在一个有很多数据点的时间序列图中绘制一条平滑的趋势线。为了简单起见,我将在这里包括前100行数据: > dput(test_so) structure(list(anon_screen_name = c("b62f7980d2e0fdb6b71f52d53f2fb84142d14f93", "b62f7980d2e0fdb6b71f52d53f2fb84142d14f93", "20730b3a6feb773e41e70a6949c083f03d0755ad", "4f41f

我正在努力在一个有很多数据点的时间序列图中绘制一条平滑的趋势线。为了简单起见,我将在这里包括前100行数据:

> dput(test_so)
structure(list(anon_screen_name = c("b62f7980d2e0fdb6b71f52d53f2fb84142d14f93", 
"b62f7980d2e0fdb6b71f52d53f2fb84142d14f93", "20730b3a6feb773e41e70a6949c083f03d0755ad", 
"4f41fc42f34efb6f5041a98a0a6ac65e8e92d147", "4f41fc42f34efb6f5041a98a0a6ac65e8e92d147", 
"4f41fc42f34efb6f5041a98a0a6ac65e8e92d147", "4f41fc42f34efb6f5041a98a0a6ac65e8e92d147", 
"41300a566beaa7ea51c4edf758736941a87d6b65", "41300a566beaa7ea51c4edf758736941a87d6b65", 
"41300a566beaa7ea51c4edf758736941a87d6b65", "4040abe3aebd3026d4edb129c067512c5e9ac113", 
"4040abe3aebd3026d4edb129c067512c5e9ac113", "4040abe3aebd3026d4edb129c067512c5e9ac113", 
"8da3013c6ba7d36cf05ca08dbc6a701b56eb0e85", "8da3013c6ba7d36cf05ca08dbc6a701b56eb0e85", 
"8da3013c6ba7d36cf05ca08dbc6a701b56eb0e85", "8da3013c6ba7d36cf05ca08dbc6a701b56eb0e85", 
"8da3013c6ba7d36cf05ca08dbc6a701b56eb0e85", "8b96a47926dd27337a8bf324904d1eeaa4a4a879", 
"8b96a47926dd27337a8bf324904d1eeaa4a4a879", "8b96a47926dd27337a8bf324904d1eeaa4a4a879", 
"8b96a47926dd27337a8bf324904d1eeaa4a4a879", "8b96a47926dd27337a8bf324904d1eeaa4a4a879", 
"1bce8af81427363a9f5a7a97a121f4243cb454c1", "b969fc16d2fc80db7b1f2bb2ff3c480959f3e748", 
"b969fc16d2fc80db7b1f2bb2ff3c480959f3e748", "3824f1c64bd7833cde58d050e529008420e7e26b", 
"3824f1c64bd7833cde58d050e529008420e7e26b", "3824f1c64bd7833cde58d050e529008420e7e26b", 
"3824f1c64bd7833cde58d050e529008420e7e26b", "3824f1c64bd7833cde58d050e529008420e7e26b", 
"3824f1c64bd7833cde58d050e529008420e7e26b", "3824f1c64bd7833cde58d050e529008420e7e26b", 
"3824f1c64bd7833cde58d050e529008420e7e26b", "20fd05d6da731d4c105cc7332254da8755af80bc", 
"20fd05d6da731d4c105cc7332254da8755af80bc", "20fd05d6da731d4c105cc7332254da8755af80bc", 
"20fd05d6da731d4c105cc7332254da8755af80bc", "293a85f3789417c1fd1408dfe606592a964ee315", 
"293a85f3789417c1fd1408dfe606592a964ee315", "dfbcbd784f2b424593a7d29f6c2dc7fdc09fdbda", 
"dfbcbd784f2b424593a7d29f6c2dc7fdc09fdbda", "f5fc8c5756f44a8e6d63f10bcd19fdb49ea79a34", 
"f5fc8c5756f44a8e6d63f10bcd19fdb49ea79a34", "f5fc8c5756f44a8e6d63f10bcd19fdb49ea79a34", 
"f5fc8c5756f44a8e6d63f10bcd19fdb49ea79a34", "f5fc8c5756f44a8e6d63f10bcd19fdb49ea79a34", 
"61aebd0b910d02e256667fe68d567587bd1e17d5", "c5f20f7a99b1700b6d5f22902c3b558e043d8a68", 
"c5f20f7a99b1700b6d5f22902c3b558e043d8a68", "c5f20f7a99b1700b6d5f22902c3b558e043d8a68", 
"c5f20f7a99b1700b6d5f22902c3b558e043d8a68", "13a76940ac319e0cd3c4b8887295e915946b2707", 
"13a76940ac319e0cd3c4b8887295e915946b2707", "38f81421e6d0d547f6d09020647f242e05698bad", 
"2234102d23222acc0619f924c2b3caba242a95cb", "2234102d23222acc0619f924c2b3caba242a95cb", 
"2234102d23222acc0619f924c2b3caba242a95cb", "2234102d23222acc0619f924c2b3caba242a95cb", 
"9dc75642013a81f9f039c373bdf8c498a6faccff", "9dc75642013a81f9f039c373bdf8c498a6faccff", 
"9dc75642013a81f9f039c373bdf8c498a6faccff", "9dc75642013a81f9f039c373bdf8c498a6faccff", 
"a1c6fb00c357d46ef7f01498629fef7a355ca726", "aceea4cc57d8e3603c278ef6d3e85fab97fb11f0", 
"21aa193c32394276a6ed57a6b71ad83b202763d3", "74906a9393823719fd131bc72a094c546537e206", 
"74906a9393823719fd131bc72a094c546537e206", "74906a9393823719fd131bc72a094c546537e206", 
"6c6ccce2590e011ba497179b002f8b67d4ed738f", "8d4b76eff43d041e0b11ad4d05957a714fd86558", 
"8d4b76eff43d041e0b11ad4d05957a714fd86558", "8d4b76eff43d041e0b11ad4d05957a714fd86558", 
"8d4b76eff43d041e0b11ad4d05957a714fd86558", "305ebd2609f469fd5db6304007ff8838b1219375", 
"305ebd2609f469fd5db6304007ff8838b1219375", "305ebd2609f469fd5db6304007ff8838b1219375", 
"305ebd2609f469fd5db6304007ff8838b1219375", "3858a2b7d11ce558730292e2450941c1c268677e", 
"48a3ae22cc09c00643198b934d2863f6c37725b0", "48a3ae22cc09c00643198b934d2863f6c37725b0", 
"48a3ae22cc09c00643198b934d2863f6c37725b0", "48a3ae22cc09c00643198b934d2863f6c37725b0", 
"aaabc0dac0dd30c380d5514a0d640e341bb4f78f", "aaabc0dac0dd30c380d5514a0d640e341bb4f78f", 
"aaabc0dac0dd30c380d5514a0d640e341bb4f78f", "aaabc0dac0dd30c380d5514a0d640e341bb4f78f", 
"8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", "8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", 
"8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", "8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", 
"8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", "8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", 
"8e13f89a9e8394eeafcbd59200ecb48e4a97b10f", "bcc7144d5f4e3638b584f9fd8d2df6bdc1259a5a", 
"bcc7144d5f4e3638b584f9fd8d2df6bdc1259a5a", "dd182fc037fe298a4664f2fa4cc4eb1ddf3b65d2", 
"6c321b15f35e628cbb8078996e9457c32d6d2168", "c7dc7889a5d8533a8767e280f7f0dd3da44acbb7", 
"c7dc7889a5d8533a8767e280f7f0dd3da44acbb7"), week = c(1L, 3L, 
2L, 1L, 2L, 3L, 4L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 3L, 4L, 5L, 6L, 
1L, 2L, 4L, 6L, 9L, 3L, 1L, 2L, 1L, 2L, 3L, 4L, 5L, 6L, 8L, 9L, 
1L, 2L, 3L, 4L, 1L, 2L, 1L, 2L, 1L, 2L, 3L, 5L, 6L, 1L, 1L, 2L, 
3L, 4L, 1L, 2L, 2L, 2L, 3L, 4L, 5L, 1L, 2L, 3L, 4L, 3L, 4L, 1L, 
1L, 2L, 3L, 2L, 1L, 2L, 3L, 4L, 1L, 2L, 4L, 5L, 1L, 1L, 3L, 4L, 
8L, 1L, 2L, 3L, 4L, 1L, 2L, 3L, 6L, 7L, 8L, 9L, 3L, 9L, 1L, 1L, 
3L, 6L), effort_sec = c(1331L, 526L, 2184L, 1893L, 16067L, 12375L, 
8197L, 1436L, 1715L, 1018L, 6659L, 3703L, 3243L, 11379L, 10478L, 
4009L, 549L, 500L, 3325L, 5694L, 6648L, 6928L, 1334L, 3010L, 
5518L, 6901L, 5188L, 19093L, 5289L, 11311L, 500L, 4368L, 2125L, 
2770L, 1000L, 10141L, 500L, 2221L, 21489L, 1074L, 27424L, 2963L, 
10087L, 5475L, 3225L, 4432L, 1315L, 4131L, 9887L, 43181L, 22282L, 
17063L, 1947L, 4231L, 2296L, 13334L, 8277L, 1809L, 5227L, 22461L, 
13903L, 11717L, 2498L, 1530L, 4102L, 946L, 5276L, 6174L, 14545L, 
624L, 6165L, 1775L, 13825L, 7208L, 13741L, 5055L, 5750L, 6872L, 
4379L, 1077L, 10120L, 2023L, 500L, 15742L, 15453L, 16448L, 3149L, 
36360L, 22387L, 11944L, 519L, 27396L, 31021L, 11909L, 800L, 1730L, 
22833L, 4214L, 547L, 2042L)), row.names = c(NA, -100L), class = c("tbl_df", 
"tbl", "data.frame"))
基本上,当我在原始数据集上运行此代码时

df %>% 
  ggplot(aes(x = week, y = effort_sec, group = anon_screen_name)) +
  geom_line(alpha = 0.2) 
我在这里得到了这个折线图:

当我添加
+geom_smooth()

我收到以下错误消息:

geom_smooth()
使用方法='leash'和公式'y~x'跨度 小的数据值少于自由度。使用伪逆 在0.985邻域半径2.015处,倒数条件数为0 还有其他类似的奇点。4.0602跨度太小。较少的 数据值大于自由度。在0.985处使用伪逆 邻域半径2.015倒数条件数0有 还有其他类似的奇点。4.0602跨度太小。更少的数据 价值观比自由度更重要。半径为5.995时,2.5e-05上的所有数据 邻里的边界。在5.995处使用伪逆,使跨度更大 邻域半径0.005倒数条件1在7.005处 半径2.5e-05邻域边界上的所有数据。使跨度变大 还有其他类似的奇点。2.5e-05零宽度 邻里使跨度大于零宽度邻域。跨越 在
stat_smooth()
中,较大的计算失败:在外文中为NA/NaN/Inf 函数调用(arg 5)


是否有办法在
ggplot2
中添加平滑趋势线?

尝试将分组指令从ggplot()移动到geom_线()


您的问题是,通过在通用aes()中分组(即ggplot()命令中的分组),您正在指示以下geom_smooth()计算每个组的回归,而不是整个数据集的回归。您特定的错误消息只意味着许多组的观测值少于3个,因此您不能对它们进行回归
df %>% 
 ggplot(aes(x = week, y = effort_sec)) +
 geom_line(aes(group = anon_screen_name), alpha = 0.2) +
 geom_smooth()