---
title: "highlightr"
output: rmarkdown::html_vignette
vignette: >
%\VignetteIndexEntry{highlightr}
%\VignetteEngine{knitr::rmarkdown}
%\VignetteEncoding{UTF-8}
---
```{r, include = FALSE}
knitr::opts_chunk$set(
collapse = TRUE,
comment = "#>"
)
```
This package is designed to map a group of individuals' notes to the corresponding parent text, based on the frequency with which phrases occur in the individual notes.
The parent text is highlighted corresponding to this frequency, in order to create a 'heatmap' of popular phrases found in the note sheets.
This example is taken from the initial description of a crime used in a study of jury perception of algorithm use and demonstrative evidence.
The first step is to re-assign names in the notepad text to correspond with the expected format used in `token_comments()` and use the function to tokenize the comments.
```{r, message=FALSE, warning=FALSE}
library(highlightr)
comment_example_rename <- dplyr::rename(comment_example, page_notes=Notes)
toks_comment <- token_comments(comment_example_rename)
```
The next step is to tokenize the transcript in a similar manner.
```{r, message=FALSE, warning=FALSE}
transcript_example_rename <- dplyr::rename(transcript_example, text=Text)
toks_transcript <- token_transcript(transcript_example_rename)
```
After that, a fuzzy collocation is used to match the tokenized notes to the phrases in the tokenized transcript.
This function first determines the number of times a collocation of length 5 occurs in participant notes.
Fuzzy (or indirect) matches are then added to the frequency count of the transcript collocation that is the closest match.
These fuzzy matches are weighted based on the edit distance between the transcript collocation and the indirect phrase:
$$
\frac{n}{(d + 0.25)*m}
$$
Here, $n$ is the frequency of the fuzzy collocation, $d$ is the distance between the fuzzy collocation and the transcript collocation, and $m$ is the number of closest matches for the fuzzy collocation.
```{r, message=FALSE, warning=FALSE}
collocation_object <- collocate_comments_fuzzy(toks_transcript, toks_comment)
head(collocation_object)
```
The output assigns the frequency of each collocation to each word that occurs in that collocation.
For example, the first collocation in the description is "`r collocation_object$collocation[1]`", which occurs with a frequency of `r round(collocation_object$col_1[1], 2)`.
This is the only collocation in which the first word will appear, so this is the only collocation value provided for the first word.
The second word, "`r collocation_object$to_merge[2]`" appears in the next collocation as well: `r collocation_object$collocation[2]`, whose frequency is `r round(collocation_object$col_1[2],2)`, and so on for all words in the description.
Next, the `transcript_frequency()` function attaches the collocation counts to the full text of the transcript.
The collocation frequencies are averaged per word.
```{r, message=FALSE, warning=FALSE}
merged_frequency <- transcript_frequency(transcript_example_rename, collocation_object)
```
The combined document is then fed through ggplot to assign gradient colors based on frequency, and the minimum and maximum values are recorded.
```{r, message=FALSE, warning=FALSE}
freq_plot <- collocation_plot(merged_frequency)
```
After colors have been assigned, highlighted text is created based on frequency, as well as a gradient bar indicating the high and low values.
The left side of each word gradient indicates the frequency of the previous word's averaged collocation frequency, while the right side indicates the current word's averaged collocation frequency.
```{r, message=FALSE, warning=FALSE}
page_highlight <- highlighted_text(freq_plot)
```
`r page_highlight`
To exclude fuzzy matches, the `collocate_comments()` function can be used. Here, the listed frequencies are all whole numbers, because they are counts (without weighting).
```{r, message=FALSE, warning=FALSE}
collocation_object_nonfuzzy <- collocate_comments(toks_transcript, toks_comment)
head(collocation_object_nonfuzzy)
```
In this case, the highlighting pattern resembles that when the fuzzy matches are included, but the maximum value reached is smaller.
Note also that the colors used in highlighting can be changed in the "colors" argument of the `collocation_plot` function.
```{r, message=FALSE, warning=FALSE}
merged_frequency_nonfuzzy <- transcript_frequency(transcript_example_rename, collocation_object_nonfuzzy)
freq_plot_nonfuzzy <- collocation_plot(merged_frequency_nonfuzzy, colors=c("#15bf7e", "#fcc7ed"))
page_highlight_nonfuzzy <- highlighted_text(freq_plot_nonfuzzy)
```
`r page_highlight_nonfuzzy`
Additionally, the length of the collocation can be changed.
The default collocation length (shown above) is 5 words.
Below, this collocation length has been changed to 2 words.
```{r, message=FALSE, warning=FALSE}
collocation_object_2col <- collocate_comments(toks_transcript, toks_comment, collocate_length = 2)
head(collocation_object_2col, n=7)
```
In these shorter collocations, we can see that the collocation containing the name "Richard Cole" is popular, with a frequency of 87.
```{r, message=FALSE, warning=FALSE}
merged_frequency_2col <- transcript_frequency(transcript_example_rename, collocation_object_2col)
freq_plot_2col <- collocation_plot(merged_frequency_2col)
page_highlight_2col <- highlighted_text(freq_plot_2col)
```
`r page_highlight_2col`