I hope this is not to basic a question, I have a dataframe of tweets (in R). My aim is to calculate the sentiment by date.

I would be so grateful if anyone would advise me, how to concatenate tweets tweet$text by date, where each observation becomes a string of merged tweets/text

For example, if I had:

Created_Date       Tweet

2014-01-04         "the iphone is magnificent"

2014-01-04         "the iphone's screen is poor"

2014-01-04         "I will always use Apple products"

2014-01-03         "iphone is overpriced, but I love it"

2014-01-03         "Siri is very sluggish"

2014-01-03         "iphone's maps app is poor compared to Android"

I would like a loop/function to merge the tweets by Created_Date resulting in something like this

Created_Date       Tweet

2014-01-04         "the iphone is magnificent", "the iphone's screen is poor",              "I will always use Apple products"

2014-01-03         "iphone is overpriced, but I love it", "Siri is very sluggish", "iphone's maps app is poor compared to Android"

Here are my data

 dat <-   structure(list(Created_Date = structure(c(1388793600, 1388793600, 
    1388793600, 1388707200, 1388707200, 1388707200), class = c("POSIXct", 
    "POSIXt"), tzone = "UTC"), Tweet = c("the iphone is magnificent", 
    "the iphone's screen is poor", "I will always use Apple products", 
    "iphone is overpriced, but I love it", "Siri is very sluggish", 
    "iphone's maps app is poor compared to Android")), .Names = c("Created_Date", 
    "Tweet"), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, 
    -6L))
  • Please provide some reproducible example of what you want to do, this way we will better understand your problem and be able to lend you more help. – Cedric Nov 11 '17 at 20:20

An example using data.table

setDT(ta)
# first we aggregate the data, by applying the function paste, we get 6 rows
ta[,cTweet:=paste(Tweet,collapse=","),by=Created_Date]
# I'm removing the Tweet column
ta1<-ta[,.(cTweet,Created_Date)]
# using a key on the table and unique() I only extract unique values
setkey(ta1,Created_Date)
unique(ta1)
   Created_Date                                                                                                  cTweet
1:   2014-01-03 iphone is overpriced, but I love it,Siri is very sluggish,iphone's maps app is poor compared to Android
2:   2014-01-04                  the iphone is magnificent,the iphone's screen is poor,I will always use Apple products

An example using dplyr (tidyverse)

library(tidyverse)
# this approach first use the group_by function to group by date, 
# pipes `%>%` are used to pass from one data to the next with a 
# transformation at each step.

ta %>%
      group_by(Created_Date) %>%
      summarise(cTweet = paste(Tweet, collapse = ","))

# A tibble: 2 x 2
  Created_Date                                                                                                  cTweet
        <dttm>                                                                                                   <chr>
1   2014-01-03 iphone is overpriced, but I love it,Siri is very sluggish,iphone's maps app is poor compared to Android
2   2014-01-04                  the iphone is magnificent,the iphone's screen is poor,I will always use Apple products

An example using base R

aggregate(ta$Tweet,by=list(ta$Created_Date),FUN=function(X)paste(X, collapse = ","))

Just a simple implementation using loops. Probably not the fastest solution imaginable, but easy to understand.

# construction of a sample data.frame
text = c("Some random text.", 
         "Yet another line.",
         "Will this ever stop.",
         "This may be the last one.",
         "It was not the last.")
date = c("9-11-2017",
         "11-11-2017",
         "10-11-2017",
         "11-11-2017",
         "10-11-2017")
tweet = data.frame(text, date)

# array with dates in the data.frame
dates = levels(tweet$date)

# initialise results with empty strings
resultString = rep.int("", length(dates)) 

for(i in 1:length(dates)) # loop over different dates
{
    for(j in 1:length(tweet$text)) # loop over tweets
    {
        if (tweet$date[j] == dates[i]) # concatenate to resultString if dates match
        {
            resultString[i] = paste0(resultString[i], tweet$text[j])
        }
    }
}

# combine concatenated strings with dates in new data.frame
result = data.frame(date=dates, tweetsByDate=resultString)
result

# output:
# date                               tweetsByDate
# 1 10-11-2017   Will this ever stop.It was not the last.
# 2 11-11-2017 Yet another line.This may be the last one.
# 3  9-11-2017                          Some random text.

If you are using the corpus library, then you can use the group argument to term_counts or term_matrix to aggregate (sum) by date.

In your case, if you are interested in counting the number of positive, negative, and neutral words, you can first create a "stemmer" that maps words to these categories:

library(corpus)
# map terms in the AFINN dictionary to Positive/Negative; others to Neutral
stem_sent <- new_stemmer(sentiment_afinn$term,
                         ifelse(sentiment_afinn$score > 0, "Positive", "Negative"),
                         default = "Neutral")

Then, you can use this as a stemmer and get the counts by group:

term_counts(dat$Tweet, group = dat$Created_Date, stemmer = stem_sent)
##   group      term     count
## 1 2014-01-03 Negative     2 
## 2 2014-01-04 Negative     1
## 3 2014-01-03 Neutral     17
## 4 2014-01-04 Neutral     14
## 5 2014-01-03 Positive     1

Or get a matrix of counts:

term_matrix(dat$Tweet, group = dat$Created_Date, stemmer = stem_sent)
## 2 x 3 sparse Matrix of class "dgCMatrix"
##            Negative Neutral Positive
## 2014-01-03        2      17        1
## 2014-01-04        1      14        .
  • Hi Patrick, Thank you so much for taking the time to help with my query. That is exactly what I am trying to do. I have extracted 'a lot' of posts from a number of newsGroups from one country, and am trying to group them first by newsGroup, and then aggregate. The reason I do this is I wish to examine the sentiment around events (elections). I wanted to use syuzhet, to get the emotional nuance. – Robert FC Nov 16 '17 at 21:18
  • Patrick. I just read another response of yours to someone else showing how you created a loop to deal with 'stopwords' by instance. That will be a huge help as I go through a couple of million posts. Thank U vm – Robert FC Nov 16 '17 at 21:24

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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