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Overview-PackageTutorial

Overview of finnsurveytext

This tutorial aims to provide a simple overview of what is included within the finnsurveytext package and teach you how to use the main functions included in the package.

The below table shows you all the functions that are included in the package. The functions which are bolded are the main functions which are outlined in the sections below.

Section Usage Functions
1. Data Preparation use the udpipe R package to clean and annotate the raw data into a standardised format (CoNLL-U) suitable for analysis. fst_format()
fst_print_available_models()
fst_find_stopwords()
fst_rm_stop_punct()
fst_prepare()
fst_prepare_svydesign()
2. Data Exploration create wordclouds, n-gram tables and summary tables for initial insights into trends across responses. fst_summarise_short()
fst_summarise()
fst_pos()
fst_length_summary()
fst_use_svydesign()
fst_freq_table
fst_ngrams_table()
fst_ngrams_table2()
fst_freq_plot()
fst_ngrams_plot()
fst_freq()
fst_ngrams()
fst_wordcloud()
3. Concept Network creation of a concept network using the textrank R package with node size indicating word importance (PageRank)
and edge weight showing co-occurrence of words.
fst_cn_search()
fst_cn_edges()
fst_cn_nodes()
fst_cn_plot()
fst_concept_network()
4. Comparison Functions corresponding Data Exploration and Concept Network functions allowing for comparison between groups of survey respondents. fst_pos_compare()
fst_summarise_compare()
fst_length_compare()
fst_get_unique_ngrams_separate()
fst_get_unique_ngrams()
fst_join_unique()
fst_ngrams_compare_plot()
fst_freq_compare()
fst_ngrams_compare()
fst_comparison_cloud()
fst_cn_get_unique_separate()
fst_cn_get_unique()
fst_cn_compare_plot()
fst_concept_network_compare()

0. Install and Load Package

First, the finnsurveytext package needs to be installed into your R environment and loaded into the environment. You may also want to load in the survey package if you want to use a svydesign object for the data and/or weights.

library(finnsurveytext)
library(survey)

1. Data Preparation

The data preparation functions are used to take your raw survey data (in a dataframe or svydesign object within your R environment) and convert it into a standardised format ready for analysis.

The functions in the remaining sections require your data to be pre-formatted into this format.

(To learn move about the format we use, see the Universal Dependencies Project.)

Option 1: Data is in a dataframe

The package comes with sample data. For this demonstration, we use dev_coop. The raw data looks like this:

fsd_id q11_1 q11_2 q11_3 paino gender region year_of_birth education_level
1 elämiseen tarvittavat perusasiat ovat kehittymättöneet (esim. vesi, talo, ruoka). Ja niitä ei ole riittävästi varmaan koitetaan kehittää em saastuminen ja luonnonvarojen liikakäyttö, nälänhätä ja ylikansoittuminen 0.5440 Female Etelä-Suomi 1992 NA
2 on kurjuutta ja nälänhätää, asiat eivät ole vielä kehittyneet, lapset eivät pääse kouluun, tytöillä on huonompi asema kuin pojilla. pyritään auttamaan? ihmiskauppa, nälänhätä ja sodat/turvattomuus 0.7171 Female Pohjois- ja Itä-Suomi 1994 Matriculation examination
3 jokaisella ei ole turvattua toimeentuloa ja jossa todella huomaa koulutuksen arvon. autetaan ja näytetään ihmisille tie parempaan tulevaisuuteen heidän oman työnsä tuloksena. kouluttamattomuus, nälkä ja puhtaan veden puute. 0.6240 Female Helsinki-Uusimaa 1994 Matriculation examination
4 kehityksen taso ei ole yhtä korkea kuin kehittyneissä maissa yleensä haitataan kehitysmaan kehittymistä öljy, raha, se fakta että ei olla vielä päästy asumaan muualla kuin tällä yhdellä planeetalla 0.3401 NA Länsi-Suomi NA NA
5 asiat ovat vielä huonossa jamassa ja apua tarvitaan eriarvoisuus, sodat, nälänhätä tietyissä maissa 0.6240 Female Helsinki-Uusimaa 1993 Upper secondary vocational qualification

We will look at question 11_3 (responses to ‘’Jatka lausetta: Maailman kolme suurinta ongelmaa ovat… (Avokysymys)’) as our open-ended survey question. We also want to include our survey weights (in ‘paino’ column) and bring in the gender and region columns so we can use these values to compare groups.

The main function here is fst_prepare()

# FUNCTION DEFINITION
fst_prepare <- function(data,
                        question,
                        id,
                        model = "ftb",
                        stopword_list = "nltk",
                        weights = NULL,
                        add_cols = NULL,
                        manual = FALSE,
                        manual_list = "")

We can run the function as follows:

df <- fst_prepare(data = dev_coop,
                  question = 'q11_3', 
                  id = 'fsd_id', 
                  weights = 'paino',
                  add_cols = c('gender', 'region')
                  )

Summary of components

The formatted data looks like this:

doc_id paragraph_id sentence_id sentence token_id token lemma upos xpos feats head_token_id dep_rel deps misc weight gender region
1 1 1 saastuminen ja luonnonvarojen liikakäyttö, nälänhätä ja ylikansoittuminen 1 saastuminen saastuminen NOUN N,Sg,Nom Case=Nom|Number=Sing 0 root NA NA 0.544 Female Etelä-Suomi
1 1 1 saastuminen ja luonnonvarojen liikakäyttö, nälänhätä ja ylikansoittuminen 3 luonnonvarojen luonnonvaro NOUN N,Pl,Gen Case=Gen|Number=Plur 4 nmod NA NA 0.544 Female Etelä-Suomi

Option 2: Data is in a svydesign object

The other option is to get your data from a svydesign object from the survey package. The survey package is a popular package used for analysing surveys.

The main function here is fst_prepare_svydesign()

# FUNCTION DEFINITION
fst_prepare_svydesign <- function(svydesign,
                                  question,
                                  id,
                                  model = "ftb",
                                  stopword_list = "nltk",
                                  use_weights = TRUE,
                                  add_cols = NULL,
                                  manual = FALSE,
                                  manual_list = "") 

We can run the function as follows:

df2 <- fst_prepare_svydesign(svydesign = svy_dev,
                            question = 'q11_3', 
                            id = 'fsd_id', 
                            use_weights = TRUE,
                            add_cols = c('gender', 'region')
                            )

The only differences between the previous function and this one are:

The formatted data looks like this (should look very similar to the above formatted data!):

doc_id paragraph_id sentence_id sentence token_id token lemma upos xpos feats head_token_id dep_rel deps misc weight gender region
1 1 1 saastuminen ja luonnonvarojen liikakäyttö, nälänhätä ja ylikansoittuminen 1 saastuminen saastuminen NOUN N,Sg,Nom Case=Nom|Number=Sing 0 root NA NA 0.544 Female Etelä-Suomi
1 1 1 saastuminen ja luonnonvarojen liikakäyttö, nälänhätä ja ylikansoittuminen 3 luonnonvarojen luonnonvaro NOUN N,Pl,Gen Case=Gen|Number=Plur 4 nmod NA NA 0.544 Female Etelä-Suomi

2. Data Exploration

Now that we have formatted data, we can begin data exploration. These functions are used to create summary tables and to find the most common themes in your survey responses.

Summary Tables

First, let’s create some summaries using fst_summarise, fst_pos and fst_length_summary

These functions are defined as follows:

# FUNCTION DEFINITIONS
fst_summarise <- function(data, 
                          desc = "All respondents") 

fst_pos <- function(data) 
  
fst_length_summary <- function(data,
                               desc = "All respondents",
                               incl_sentences = TRUE) 

Summary of components

Hence, these functions are run for our sample data as follows:

fst_summarise(df)
##     Description Respondents No Response Proportion Total Words Unique Words
## 1 All responses         945          25       0.97        4192         1132
##   Unique Lemmas
## 1           994
fst_pos(df)
##     UPOS                  UPOS_Name Count Proportion
## 1    ADJ                  adjective   389      0.093
## 2    ADP                 adposition    24      0.006
## 3    ADV                     adverb    64      0.015
## 4    AUX                  auxiliary     3      0.001
## 5  CCONJ   coordinating conjunction     3      0.001
## 6    DET                 determiner    28      0.007
## 7   INTJ               interjection     2      0.000
## 8   NOUN                       noun  3311      0.790
## 9    NUM                    numeral     5      0.001
## 10  PART                   particle    29      0.007
## 11  PRON                    pronoun    12      0.003
## 12 PROPN                proper noun    31      0.007
## 13 PUNCT                punctuation     0      0.000
## 14 SCONJ  subordinating conjunction     0      0.000
## 15   SYM                     symbol     1      0.000
## 16  VERB                       verb   278      0.066
## 17     X                      other    12      0.003
fst_length_summary(df)
## # A tibble: 2 × 8
##   Description              Respondents  Mean Minimum    Q1 Median    Q3 Maximum
##   <chr>                          <int> <dbl>   <int> <dbl>  <dbl> <dbl>   <int>
## 1 All responses- Words             920  5.52       1     4      5     6      32
## 2 All responses- Sentences         920  1.01       1     1      1     1       3

Identification of frequent words and phrases

Wordclouds

The first of our frequent words visualisations in the wordcloud which comes from the wordcloud package.

It is defined as follows:

# FUNCTION DEFINITION
fst_wordcloud <- function(data,
                          pos_filter = NULL,
                          max = 100,
                          use_svydesign_weights = FALSE,
                          id = "",
                          svydesign = NULL,
                          use_column_weights = FALSE)

Summary of components

  • data is the formatted data.
  • pos_filter is an optional list of POS tags for inclusion in the wordcloud. The default is NULL.
  • max is the maximum number of words to display, the default is 100.

Then, we have options for weighting the words in the cloud. These will all default to not include weights.

  • use_svydesign_weights should be set as TRUE if we want to use weights from within a svydesign object.
  • The id is only required if weights are coming from a svydesign object
  • The svydesign object

Here are some examples of creating wordclouds:

fst_wordcloud(df)

# We can only get weights from svydesign if they are NOT already in our formatted data. Hence we remove them for this demonstration!
df2$weight <- NULL
fst_wordcloud(df2, 
              pos_filter = c("NOUN", "VERB", "ADJ", "ADV"),
              max=100, 
              use_svydesign_weights = TRUE, 
              id = 'fsd_id', 
              svydesign = svy_dev)

N-gram plots

Then, we have functions to identify and plot the most frequent words or n-grams (sets of n words in order).

# FUNCTION DEFINITIONS
fst_freq <- function(data,
                     number = 10,
                     norm = NULL,
                     pos_filter = NULL,
                     strict = TRUE,
                     name = NULL,
                     use_svydesign_weights = FALSE,
                     id = "",
                     svydesign = NULL,
                     use_column_weights = FALSE)
  
fst_ngrams <- function(data,
                       number = 10,
                       ngrams = 1,
                       norm = NULL,
                       pos_filter = NULL,
                       strict = TRUE,
                       name = NULL,
                       use_svydesign_weights = FALSE,
                       id = "",
                       svydesign = NULL,
                       use_column_weights = FALSE)

Summary of components

  • data is the formatted data.
  • number is the number of top words/ngrams to display
  • ngrams is the type of n-grams, default is 1.
  • norm is an optional method for normalising the data. Valid settings are “number_words” (the number of words in the responses), “number_resp” (the number of responses), or NULL (raw count returned, default, also used when weights are applied).
  • pos_filter is an optional list of POS tags for inclusion. The default is NULL.
  • strict is whether to strictly cut-off at number (ties are alphabetically ordered). The default value is TRUE.
  • The name is an optional “name” for the plot to add to title, default is NULL.

Then, we again have options for weighting the words in the plot. Again, these all default to not include weights.

  • use_svydesign_weights should be set as TRUE if we want to use weights from within a svydesign object.
  • The id is only required if weights are coming from a svydesign object
  • The svydesign object
  • use_svydesign_weights should be set as TRUE if we want to use weights from the weight column as set-up during the data formatting.
fst_freq(df)

fst_ngrams(df, 
           number = 9, 
           ngrams = 2, 
           strict = FALSE,
           use_column_weights = TRUE)

fst_freq(df,
         number = 5, 
         strict = FALSE,)

(fst_freq_table() and fst_ngrams_table() can be used to instead create tables of the top words.)

fst_freq_table(df, number = 15, strict = FALSE)
##                 words occurrence
## 1             köyhyys        258
## 2           nälänhätä        239
## 3                sota        231
## 4      ilmastonmuutos        141
## 5               puute        117
## 6             ihminen        105
## 7                vesi         98
## 8        epätasa-arvo         87
## 9              ahneus         84
## 10              nälkä         81
## 11             puhdas         75
## 12            sairaus         59
## 13          itsekkyys         58
## 14       väestönkasvu         48
## 15 välinpitämättömyys         47

3. Concept Network

Our concept network function uses the TextRank algorithm which is a graph-based ranking model for text processing. Vertices represent words and co-occurrence between words is shown through edges. Word importance is determined recursively (through the unsupervised learning TextRank algorithm) where words get more weight based on how many words co-occur and the weight of these co-occurring words.

To utilise the TextRank algorithm in finnsurveytext, we use the textrank package. For further information on the package, please see this documentation. This package implements the TextRank and PageRank algorithms. (PageRank is the algorithm that Google uses to rank webpages.) You can read about the underlying TextRank algorithm here and about the PageRank algorithm here.

The main concept network function is fst_concept_network(). It is defined as follows:

# FUNCTION DEFINITIONS
fst_concept_network <- function(data,
                                concepts,
                                threshold = NULL,
                                norm = NULL,
                                pos_filter = NULL,
                                title = NULL) 

Summary of components

For example, we can create the following concept network plots:

fst_concept_network(df, 
                    concepts = "köyhyys, nälänhätä, sota, ilmastonmuutos, puute", 
                    )

4. Comparison Functions

Recall that when we preprocessed the data, we included two additional columns, gender and region, to allow for comparison between respondents based on these values.

There are counterpart comparison functions for each of the functions we have shown above.

The comparison summary tables are defined as follows:

fst_pos_compare <- function(data,
                            field,
                            exclude_nulls = FALSE,
                            rename_nulls = 'null_data')

fst_summarise_compare <- function(data,
                                  field,
                                  exclude_nulls = FALSE,
                                  rename_nulls = 'null_data')

fst_length_compare <- function(data,
                               field,
                               incl_sentences = TRUE,
                               exclude_nulls = FALSE,
                               rename_nulls = 'null_data') 

Summary of Components

Let’s compare our responses based on the region of the respondent:

knitr::kable(fst_pos_compare(df, 'region'))
UPOS Part_of_Speech_Name Etelä-Suomi-Count Etelä-Suomi-Prop Helsinki-Uusimaa-Count Helsinki-Uusimaa-Prop Länsi-Suomi-Count Länsi-Suomi-Prop Pohjois- ja Itä-Suomi-Count Pohjois- ja Itä-Suomi-Prop null_data-Count null_data-Prop
ADJ adjective 79 0.101 118 0.098 105 0.082 84 0.093 3 0.188
ADP adposition 4 0.005 11 0.009 6 0.005 3 0.003 0 0.000
ADV adverb 8 0.010 20 0.017 22 0.017 13 0.014 1 0.062
AUX auxiliary 1 0.001 1 0.001 1 0.001 0 0.000 0 0.000
CCONJ coordinating conjunction 1 0.001 0 0.000 1 0.001 1 0.001 0 0.000
DET determiner 6 0.008 10 0.008 7 0.005 5 0.006 0 0.000
INTJ interjection 0 0.000 2 0.002 0 0.000 0 0.000 0 0.000
NOUN noun 610 0.776 936 0.774 1028 0.805 725 0.802 12 0.750
NUM numeral 1 0.001 1 0.001 3 0.002 0 0.000 0 0.000
PART particle 2 0.003 15 0.012 9 0.007 3 0.003 0 0.000
PRON pronoun 1 0.001 4 0.003 3 0.002 4 0.004 0 0.000
PROPN proper noun 3 0.004 12 0.010 14 0.011 2 0.002 0 0.000
PUNCT punctuation 0 0.000 0 0.000 0 0.000 0 0.000 0 0.000
SCONJ subordinating conjunction 0 0.000 0 0.000 0 0.000 0 0.000 0 0.000
SYM symbol 0 0.000 1 0.001 0 0.000 0 0.000 0 0.000
VERB verb 69 0.088 72 0.060 75 0.059 62 0.069 0 0.000
X other 1 0.001 6 0.005 3 0.002 2 0.002 0 0.000
knitr::kable(fst_summarise_compare(df, 'region'))
Description Respondents No Response Proportion Total Words Unique Words Unique Lemmas
Etelä-Suomi 176 0 1.00 786 360 336
Helsinki-Uusimaa 269 10 0.96 1209 493 443
Länsi-Suomi 284 8 0.97 1277 478 425
Pohjois- ja Itä-Suomi 213 7 0.97 904 338 309
null_data 3 0 1.00 16 16 16
knitr::kable(fst_length_compare(df, 'region'))
Description Respondents Mean Minimum Q1 Median Q3 Maximum
Etelä-Suomi- Words 176 5.483 2 4.0 5 6 23
Etelä-Suomi- Sentences 176 1.017 1 1.0 1 1 3
Helsinki-Uusimaa- Words 259 5.579 1 4.0 5 6 25
Helsinki-Uusimaa- Sentences 259 1.023 1 1.0 1 1 3
Länsi-Suomi- Words 276 5.620 1 4.0 5 6 32
Länsi-Suomi- Sentences 276 1.007 1 1.0 1 1 2
Pohjois- ja Itä-Suomi- Words 206 5.311 1 4.0 5 6 20
Pohjois- ja Itä-Suomi- Sentences 206 1.015 1 1.0 1 1 2
null_data- Words 3 6.333 5 5.5 6 7 8
null_data- Sentences 3 1.000 1 1.0 1 1 1

The ngrams comparison functions are defined similarly (with some additional new values):

# FUNCTION DEFINITIONS
fst_freq_compare <- function(data,
                             field,
                             number = 10,
                             norm = NULL,
                             pos_filter = NULL,
                             strict = TRUE,
                             use_svydesign_weights = FALSE,
                             id = "",
                             svydesign = NULL,
                             use_column_weights = FALSE,
                             exclude_nulls = FALSE,
                             rename_nulls = 'null_data',
                             unique_colour = "indianred",
                             title_size = 20,
                             subtitle_size = 15)


fst_ngrams_compare <- function(data,
                              field,
                              number = 10,
                              ngrams = 1,
                              norm = NULL,
                              pos_filter = NULL,
                              strict = TRUE,
                              use_svydesign_weights = FALSE,
                              id = "",
                              svydesign = NULL,
                              use_column_weights = FALSE,
                              exclude_nulls = FALSE,
                              rename_nulls = 'null_data',
                              unique_colour = "indianred",
                              title_size = 20,
                              subtitle_size = 15)

The new components are:

For the ngrams, let’s compare respondents by gender.

fst_freq_compare(df, 
                 'gender', 
                 use_column_weights = TRUE,
                 exclude_nulls = TRUE)

fst_ngrams_compare(df, 
                   'gender', 
                   ngrams = 2, 
                   use_column_weights = TRUE, 
                   exclude_nulls = TRUE)

The comparison cloud extends the wordcloud concept.

A comparison cloud compares the relative frequency with which a term is used in two or more documents. This cloud shows words that occur more regularly in responses from a specific type of respondent. For more information about comparison clouds, you can read this documentation.

The comparison cloud is defined as follows, with settings as defined for the previous functions:

# FUNCTION DEFINITION
fst_comparison_cloud <- function(data,
                                 field,
                                 pos_filter = NULL,
                                 norm = NULL,
                                 max = 100,
                                 use_svydesign_weights = FALSE,
                                 id = "",
                                 svydesign = NULL,
                                 use_column_weights = FALSE,
                                 exclude_nulls = FALSE,
                                 rename_nulls = "null_data") 

Thus, we can create comparison clouds:

fst_comparison_cloud(df, 'gender', max = 40, use_column_weights = TRUE, exclude_nulls = TRUE)

Finally we have the comparison concept network which has the following components which should be familiar from previous functions:

# FUNCTION DEFINITION
fst_concept_network_compare <- function(data,
                                        concepts,
                                        field,
                                        norm = NULL,
                                        threshold = NULL,
                                        pos_filter = NULL,
                                        exclude_nulls = FALSE,
                                        rename_nulls = 'null_data',
                                        title_size = 20,
                                        subtitle_size = 15)

We run the comparison concept network as follows:

fst_concept_network_compare(df, 
                            concepts = "köyhyys, nälänhätä, sota, ilmastonmuutos, puute", 
                            'gender',
                            exclude_nulls = TRUE
                            )

For more information on the finnsurveytext functions, see the package website and documentation available from the CRAN.

Data

The package comes with sample data from two surveys obtained from the Finnish Social Science Data Archive:

1. Child Barometer Data

2. Development Cooperation Data

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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