I am working with a huge dataframe and had some problems loading it from the excel file. I could only load it using read_xlsx from the readxl package. However i have now realized that some of the cells contains "TRUE" instead of the real value from the excel file. How can it load the file wrongly and is there any solution to avoid this?

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    Hard to tell, but this may be caused from allowing read_xlsx to "guess" the column types. If you know the column type beforehand, it's always best to specify them with the col_types parameter. In this case, it may have guessed that column type was logical when really it's supposed to be something else (say, text or numeric). – JasonAizkalns Sep 14 at 20:33
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    You could save it as a csv file in Excel and then read that in. – G. Grothendieck Sep 14 at 20:44
  • You are a genius JasonAizkalns change of col_types default setting NULL to a vector containing the right class of each columns solved the problem. It seems that the problem occurred on the columns with a lot of missing values, which implied that the numeric values was misinterpreted. So if someone else has a large dataset with missing values you should be aware of this, when using read_xlsx from readx1. – Christian Skjøth Sep 14 at 21:27
  • @ChristianSkjøth If you want to help future people with this problem, feel free to write up an answer yourself. Just make sure that you cite JasonAizkalns when you do – divibisan Sep 14 at 21:35
  • i have done that, thanks. – Christian Skjøth Sep 14 at 21:53
up vote 0 down vote accepted

Following this advice solved the problem.

JasonAizkalns: Hard to tell, but this may be caused from allowing read_xlsx to "guess" the column types. If you know the column type beforehand, it's always best to specify them with the col_types parameter. In this case, it may have guessed that column type was logical when really it's supposed to be something else (say, text or numeric)

Cleaning the dataset from columns with none numeric values and then using x<-read_xlsx(filename, skip = 1, col_types = "numeric"). Hereafter i y<- read_xlsx(filename, skip = 1, col_types = "date") on the column containing dates. I used cbind(y,x) to complete the dataset with the none numeric column. It seems that read_xlsx misinterprets the columns with numeric values if there is a lot of values missing.

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