I have the following data.frame. How can I recognize if there is any categorical variable that should be encoded as factors in a data.frame?
YEAR PBE CBE PPO CPO PFO DINC CFO RDINC RFP
1 1925 59.7 58.6 60.5 65.8 65.8 51.4 90.9 68.5 877
2 1926 59.7 59.4 63.3 63.3 68.0 52.6 92.1 69.6 899
3 1927 63.0 53.7 59.9 66.8 65.5 52.1 90.9 70.2 883
4 1928 71.0 48.1 56.3 69.9 64.8 52.7 90.9 71.9 884
5 1929 71.0 49.0 55.0 68.7 65.6 55.1 91.1 75.2 895
6 1930 74.2 48.2 59.6 66.1 62.4 48.8 90.7 68.3 874
7 1931 72.1 47.9 57.0 67.4 51.4 41.5 90.0 64.0 791
8 1932 79.0 46.0 49.5 69.7 42.8 31.4 87.8 53.9 733
9 1933 73.1 50.8 47.3 68.7 41.6 29.4 88.0 53.2 752
10 1934 70.2 55.2 56.6 62.2 46.4 33.2 89.1 58.0 811
11 1935 82.2 52.2 73.9 47.7 49.7 37.0 87.3 63.2 847
12 1936 68.4 57.3 64.4 54.4 50.1 41.8 90.5 70.5 845
13 1937 73.0 54.4 62.2 55.0 52.1 44.5 90.4 72.5 849
14 1938 70.2 53.6 59.9 57.4 48.4 40.8 90.6 67.8 803
15 1939 67.8 53.9 51.0 63.9 47.1 43.5 93.8 73.2 793
16 1940 63.4 54.2 41.5 72.4 47.8 46.5 95.5 77.6 798
17 1941 56.0 60.0 43.9 67.4 52.2 56.3 97.5 89.5 830
Is this a correct answer?
yes! factor(beef$PBE) has 14 levels, factor(beef$PPO) has 16 levels, factor(beef$CFO) has 15 levels, and the rest cannot be encoded as factor because they have complete 17 levels.
> is.factor(beef) [1] FALSE
str(data)
to have a look at the actual data types. Then choose if those are rigth or wrong. Finally coerce the data type with functions such as:as.character()
,as.factor()
,as.numeric()
, etc.