Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a dataframe that I want to reshape; my reshape code:

matchedlong <- reshape(matched, direction = 'long', varying = c(29:33, 36:3943), v.names = c("Math34", "TFCIn"), times = 2006:2009, idvar = "schoolnum")

in "matched" columns 36 to 39 are logical (TRUE FALSE) but in matchedlong they have turned into numbers somehow .... No clear pattern to the numbers.

any ideas?



Sample data:

example.data <- structure(list(Grade_Range_2008 = structure(c(14L, 14L, 40L, 40L, 36L, 13L), .Label = c("3-5, UE", "4-5, UE", "4-8, UE, US", "5-10, UE, US", "5-8, 10, UE, US", "5-8, UE, US", "5-9, UE, US", "6-11, US", "6-12, UE, US", "6-7, UE, US", "6-8, 10, UE, US", "6-8, UE", "6-8, UE, US", "6-9, UE, US", "6, UE", "7-10, US", "7-8, US", "8-Jun", "8-May", "K-3", "K-3, UE", "K-4, UE", "K-5", "K-5, UE", "K-6, UE", "K-8", "K-8, UE", "K-8, UE, US", "K, 2-5, UE", "N/A", "PK-3, UE", "PK-4, UE", "PK-5, 10, UE", "PK-5, 7-9, UE, US", "PK-5, 8, UE", "PK-5, UE", "PK-6, 10, UE", "PK-6, UE", "PK-8, UE", "PK-8, UE, US"), class = "factor"), X__of_Yrs_in_school = c(0L, 0L, 0L, 0L, 0L, 0L), Total_Enrollment_2008 = c(348L, 444L, 636L, 495L, 319L, 410L), Free_Lunch_pct_2008 = c(75L, 89L, 94L, 89L, 89L, 91L), Reduced_Lunch_pct_2008 = c(6L, 6L, 3L, 4L, 5L, 4L), Stability_pct_2008 = c(89L, 93L, 100L, 98L, 92L, 81L), Limited_Eng__Prof__pct_2008 = c(8L, 20L, 8L, 10L, 19L, 19L), Am__Ind_pct_2008 = c(1L, 2L, 0L, 2L, 0L, 2L), Black_pct_2008 = c(41L, 39L, 28L, 33L, 32L, 38L), Hispanic_pct_2008 = c(55L, 59L, 70L, 61L, 65L, 57L), Asian_pct_2008 = c(2L, 1L, 0L, 2L, 1L, 1L), White_pct_2008 = c(2L, 0L, 1L, 2L, 1L, 2L), Multi_pct_2008 = c(0L, 0L, 0L, 0L, 0L, 0L), w_o_Valid_Cert__N_2008 = c(4L, 0L, 1L, 0L, 1L, 1L), w_o_Valid_Cert__pct_2008 = c(11L, 0L, 2L, 0L, 3L, 5L), Teaching_Out_of_Certification_N_ = c(7L, 7L, 2L, 13L, 3L, 4L), Teaching_Out_of_Certification_pc = c(20L, 15L, 4L, 25L, 9L, 18L), X_3_yrs__Exp_N_2008 = c(12L, 13L, 5L, 12L, 5L, 5L), X_3_yrs__Exp_pct_2008 = c(34L, 28L, 11L, 24L, 15L, 23L), Masters_Plus_N_2008 = c(6L, 11L, 15L, 10L, 16L, 8L), Masters_Plus___2008 = c(17L, 23L, 32L, 20L, 47L, 36L), Core_Classes_N_2008 = c(78L, 142L, 49L, 91L, 22L, 49L ), Core_Not_Taught_by_HQ_Teachers_p = c(23L, 6L, 2L, 24L, 9L, 20L), Number_of_Classes_N_2008 = c(93L, 193L, 56L, 119L, 33L, 68L), Clases_Not_taught_by_App__Cert__ = c(18L, 18L, 2L, 37L, 3L, 13L), Clases_Not_taught_by_App__Cert_0 = c(19L, 9L, 4L, 31L, 9L, 19L), Turnover_Rate_of_Teachers_with__ = c(31L, 56L, 20L, 32L, 0L, 50L), Turnover_Rate_all_Teachers_pct_2 = c(42L, 29L, 17L, 30L, 14L, 49L), Math_Level_3_4_pct_2006 = c(5.1, 16.4, 58.2, 34.4, 48.9, 12.4), Math_Level_3_4_pct_2007 = c(15.2, 22.1, 65.7, 29.9, 70.5, 22.6), Math_Level_3_4_pct_2008 = c(29.9, 43.2, 69.8, 41.2, 78.9, 38.5), Math_Level_3_4_pct_2009 = c(50.7, 49.7, 80.7, 47.1, 83.9, 51.6), Att__pct_2005 = c(0.83, 0.86, 0.89, 0.9, 0.89, 0.87), Susp__pct_2005 = c(6L, 15L, 1L, 4L, 0L, 3L), schoolnum = c(4013, 4045, 4096, 4101, 4102, 4117 ), In_2006 = c(FALSE, FALSE, FALSE, FALSE, FALSE, FALSE), In_2007 = c(FALSE, FALSE, FALSE, FALSE, FALSE, FALSE), In_2008 = c(FALSE, FALSE, FALSE, FALSE, FALSE, FALSE), In_2009 = c(FALSE, FALSE, FALSE, FALSE, FALSE, FALSE), weights = c(1, 1, 1, 1, 1, 1 )), .Names = c("Grade_Range_2008", "X__of_Yrs_in_school", "Total_Enrollment_2008", "Free_Lunch_pct_2008", "Reduced_Lunch_pct_2008", "Stability_pct_2008", "Limited_Eng__Prof__pct_2008", "Am__Ind_pct_2008", "Black_pct_2008", "Hispanic_pct_2008", "Asian_pct_2008", "White_pct_2008", "Multi_pct_2008", "w_o_Valid_Cert__N_2008", "w_o_Valid_Cert__pct_2008", "Teaching_Out_of_Certification_N_", "Teaching_Out_of_Certification_pc", "X_3_yrs__Exp_N_2008", "X_3_yrs__Exp_pct_2008", "Masters_Plus_N_2008", "Masters_Plus___2008", "Core_Classes_N_2008", "Core_Not_Taught_by_HQ_Teachers_p", "Number_of_Classes_N_2008", "Clases_Not_taught_by_App__Cert__", "Clases_Not_taught_by_App__Cert_0", "Turnover_Rate_of_Teachers_with__", "Turnover_Rate_all_Teachers_pct_2", "Math_Level_3_4_pct_2006", "Math_Level_3_4_pct_2007", "Math_Level_3_4_pct_2008", "Math_Level_3_4_pct_2009", "Att__pct_2005", "Susp__pct_2005", "schoolnum", "In_2006", "In_2007", "In_2008", "In_2009", "weights"), row.names = c(1L, 4L, 7L, 8L, 11L, 12L), class = "data.frame")

share|improve this question
@Peter: if you want a faster response, put your data in here using the dput() function. That way people can easily load it. –  Shane Dec 9 '09 at 20:16

1 Answer 1

up vote 3 down vote accepted

A column must be all of one data type; you can't mix logical and numeric.

Not sure how you would even do "long" analysis on multiple different data types because usually those are the same variables with different groupings. If you need to, try converting your logical values to numeric first (with as.numeric).

While you're not using the reshape package, Hadley made this point in his discussion of the melt() function, which is performing the same task (see this paper, for instance):

In the current implementation [of melt], there is only one assumption that melt makes: all measured values must be of the same type, e.g., numeric, factor, date. We need this assumption because the molten data is stored in an R data frame, and the value column can be only one type. Most of the time this is not a problem as there are few cases where it makes sense to combine different types of variables in the cast output.


I think you may be trying to do two things at once. Is this what you want?

a <- reshape(example.data[,-c(36:39)], direction = 'long', varying = c(29:32), v.names = c("Math34"), times = 2006:2009, idvar = "schoolnum")
b <- reshape(example.data[,-c(29:32)], direction = 'long', varying = c(36:39)-4, v.names = c("TFCIn"), times = 2006:2009, idvar = "schoolnum")
c <- merge(a,b)
share|improve this answer
Thanks I tried using as.numeric, and still got the same result. That is, I tried matched$In_2006 <- as.numeric(matched$In_2006) matched$In_2007 <- as.numeric(matched$In_2007) matched$In_2008 <- as.numeric(matched$In_2008) matched$In_2009 <- as.numeric(matched$In_2009) matchedlong <- reshape(matched, direction = 'long', varying = c(29:32, 36:39), v.names = c("Math34", "TFCIn"), times = 2006:2009, idvar = "schoolnum") and the TFCIn variable still has weird numbers (e.g. 15.2) instead of the 0 and 1 I would now expect. –  Peter Flom Dec 9 '09 at 21:01
Ok. Have a look at my update. –  Shane Dec 9 '09 at 21:33
Perfect! Thanks! –  Peter Flom Dec 9 '09 at 22:35

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.