Thank you David.
What about if I want to list the excluded rows?
I used this
(dat3 <- dat1[unique(c(BadName, BadAge, BadWeight)), ])
It did not work.The desired output is,
Alex, 20, 13X
John, 3BC, 175
Jack3, 34, 140
Thank you,
On Sat, Jan 29, 2022 at 10:15 PM David Carlson <dcarlson at tamu.edu>
wrote:
> It is possible that there would be errors on the same row for different
> columns. This does not happen in your example. If row 4 was "John6,
3BC,
> 175X" then row 4 would be included 3 times, but we only need to remove
it
> once. Removing the duplicates is not necessary since R would not get
> confused, but length(unique(c(BadName, BadAge, BadWeight)) indicates how
> many lines are being removed.
>
> David
>
> On Sat, Jan 29, 2022 at 8:32 PM Val <valkremk at gmail.com> wrote:
>
>> Thank you David for your help. I just have one question on this. What
is
>> the purpose of using the "unique" function on this? (dat2
<-
>> dat1[-unique(c(BadName, BadAge, BadWeight)), ]) I got the same result
>> without using it. ZjQcmQRYFpfptBannerStart
>> This Message Is From an External Sender
>> This message came from outside your organization.
>> ZjQcmQRYFpfptBannerEnd
>> Thank you David for your help.
>>
>> I just have one question on this. What is the purpose of using the
>> "unique" function on this?
>> (dat2 <- dat1[-unique(c(BadName, BadAge, BadWeight)), ])
>>
>> I got the same result without using it.
>> (dat2 <- dat1[-(c(BadName, BadAge, BadWeight)), ])
>>
>> My concern is when I am applying this for the large data set the
>> "unique" function may consume resources(time and memory).
>>
>> Thank you.
>>
>> On Sat, Jan 29, 2022 at 12:30 AM David Carlson <dcarlson at
tamu.edu> wrote:
>>
>>> Given that you know which columns should be numeric and which
should be
>>> character, finding characters in numeric columns or numbers in
character
>>> columns is not difficult. Your data frame consists of three
character
>>> columns so you can use regular expressions as Bert mentioned. First
you
>>> should strip the whitespace out of your data:
>>>
>>> dat1 <-read.table(text="Name, Age, Weight
>>> Alex, 20, 13X
>>> Bob, 25, 142
>>> Carol, 24, 120
>>> John, 3BC, 175
>>> Katy, 35, 160
>>> Jack3, 34, 140",sep=",", header=TRUE,
stringsAsFactors=FALSE,
>>> strip.white=TRUE)
>>>
>>> Now check to see if all of the fields are character as expected.
>>>
>>> sapply(dat1, typeof)
>>> # Name Age Weight
>>> # "character" "character" "character"
>>>
>>> Now identify character variables containing numbers and numeric
>>> variables containing characters:
>>>
>>> BadName <- which(grepl("[[:digit:]]", dat1$Name))
>>> BadAge <- which(grepl("[[:alpha:]]", dat1$Age))
>>> BadWeight <- which(grepl("[[:alpha:]]", dat1$Weight))
>>>
>>> Next remove those rows:
>>>
>>> (dat2 <- dat1[-unique(c(BadName, BadAge, BadWeight)), ])
>>> # Name Age Weight
>>> # 2 Bob 25 142
>>> # 3 Carol 24 120
>>> # 5 Katy 35 160
>>>
>>> You still need to convert Age and Weight to numeric, e.g. dat2$Age
<-
>>> as.numeric(dat2$Age).
>>>
>>> David Carlson
>>>
>>>
>>> On Fri, Jan 28, 2022 at 11:59 PM Bert Gunter <bgunter.4567 at
gmail.com>
>>> wrote:
>>>
>>>> As character 'polluted' entries will cause a column to
be read in (via
>>>> read.table and relatives) as factor or character data, this
sounds like a
>>>> job for regular expressions. If you are not familiar with this
subject,
>>>> time to learn. And, yes, ZjQcmQRYFpfptBannerStart
>>>> This Message Is From an External Sender
>>>> This message came from outside your organization.
>>>> ZjQcmQRYFpfptBannerEnd
>>>>
>>>> As character 'polluted' entries will cause a column to
be read in (via
>>>> read.table and relatives) as factor or character data, this
sounds like a
>>>> job for regular expressions. If you are not familiar with this
subject,
>>>> time to learn. And, yes, some heavy lifting will be required.
>>>> See ?regexp for a start maybe? Or the stringr package?
>>>>
>>>> Cheers,
>>>> Bert
>>>>
>>>>
>>>>
>>>>
>>>> On Fri, Jan 28, 2022, 7:08 PM Val <valkremk at gmail.com>
wrote:
>>>>
>>>> > Hi All,
>>>> >
>>>> > I want to remove rows that contain a character string in
an integer
>>>> > column or a digit in a character column.
>>>> >
>>>> > Sample data
>>>> >
>>>> > dat1 <-read.table(text="Name, Age, Weight
>>>> > Alex, 20, 13X
>>>> > Bob, 25, 142
>>>> > Carol, 24, 120
>>>> > John, 3BC, 175
>>>> > Katy, 35, 160
>>>> > Jack3, 34,
140",sep=",",header=TRUE,stringsAsFactors=F)
>>>> >
>>>> > If the Age/Weight column contains any character(s) then
remove
>>>> > if the Name column contains an digit then remove that row
>>>> > Desired output
>>>> >
>>>> > Name Age weight
>>>> > 1 Bob 25 142
>>>> > 2 Carol 24 120
>>>> > 3 Katy 35 160
>>>> >
>>>> > Thank you,
>>>> >
>>>> > ______________________________________________
>>>> > R-help at r-project.org mailing list -- To UNSUBSCRIBE and
more, see
>>>> >
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>>>> > PLEASE do read the posting guide
>>>> >
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>>>> > and provide commented, minimal, self-contained,
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>>>> >
>>>>
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>>>>
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>>>>
>>>>
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