Title: | Conjunctive Analysis of Case Configurations |
Version: | 0.1.1 |
Date: | 2024-10-03 |
Description: | A set of functions to conduct Conjunctive Analysis of Case Configurations (CACC) as described in Miethe, Hart, and Regoeczi (2008) <doi:10.1007/s10940-008-9044-8>, and identify and quantify situational clustering in dominant case configurations as described in Hart (2019) <doi:10.1177/0011128719866123>. Initially conceived as an exploratory technique for multivariate analysis of categorical data, CACC has developed to include formal statistical tests that can be applied in a wide variety of contexts. This technique allows examining composite profiles of different units of analysis in an alternative way to variable-oriented methods. |
License: | MIT + file LICENSE |
Encoding: | UTF-8 |
RoxygenNote: | 7.2.1 |
URL: | https://github.com/amoneva/cacc |
BugReports: | https://github.com/amoneva/cacc/issues |
Imports: | dplyr, ggplot2, rlang, stats, tibble, tidyr |
Depends: | R (≥ 4.1) |
LazyData: | true |
NeedsCompilation: | no |
Packaged: | 2024-10-03 16:10:21 UTC; amone |
Author: | Asier Moneva |
Maintainer: | Asier Moneva <amoneva@nscr.nl> |
Repository: | CRAN |
Date/Publication: | 2024-10-03 16:20:02 UTC |
Conjunctive Analysis of Case Configurations
Description
Computes a Conjunctive Analysis of Case Configurations (CACC).
Usage
cacc(data, ivs, dv)
Arguments
data |
A data frame or a tibble. |
ivs |
A vector of names of the independent variables, without quotes. Variables must be categorical, either integer, character, or factor. |
dv |
Name of the dependent variable, without quotes. Variable must be a dichotomous integer or factor with values 0 (absence) and 1 (presence). |
Value
Returns a tibble with the CACC matrix.
References
Miethe, T. D., Hart, T. C., & Regoeczi, W. C. (2008). The Conjunctive Analysis of Case Configurations: An Exploratory Method for Discrete Multivariate Analyses of Crime Data. Journal of Quantitative Criminology, 24, 227–241. https://doi.org/10.1007/s10940-008-9044-8
Examples
cacc(
data = onharassment,
ivs = c(sex, age, hours, snapchat, instagram, facebook, twitter, name, photos, privacy),
dv = rep_victim
)
cacc(onharassment, ivs = sex:privacy, dv = rep_victim)
# Syntax with the native R pipe
onharassment |> cacc(ivs = sex:privacy, dv = rep_victim)
Situational Clustering Index
Description
Computes a Situational Clustering Index (SCI) to quantify the magnitude of the clustering of observations among dominant profiles in a cacc_matrix
.
Usage
cluster_sci(cacc_matrix)
Arguments
cacc_matrix |
A tibble. The output of the |
Value
Returns a numeric value.
References
Hart, T. C. (2019). Identifying Situational Clustering and Quantifying Its Magnitude in Dominant Case Configurations: New Methods for Conjunctive Analysis. Crime & Delinquency, 66(1), 143-159. https://doi.org/10.1177/0011128719866123
Examples
cluster_sci(cacc(onharassment, ivs = sex:privacy, dv = rep_victim))
Chi-Square Goodness-of-Fit Test
Description
Computes a Chi-Square Goodness-of-Fit Test to determine whether there is statistically significant clustering of observations among dominant profiles in a cacc_matrix
.
Usage
cluster_xsq(cacc_matrix)
Arguments
cacc_matrix |
A tibble. The output of the |
Value
Returns a list with the Chi-square results. This is the same object returned by the chisq.test
function from the stats
package.
References
Hart, T. C. (2019). Identifying Situational Clustering and Quantifying Its Magnitude in Dominant Case Configurations: New Methods for Conjunctive Analysis. Crime & Delinquency, 66(1), 143-159. https://doi.org/10.1177/0011128719866123
Examples
cluster_xsq(cacc(onharassment, ivs = sex:privacy, dv = rep_victim))
Main effect
Description
Computes the main effect that a specific value of a variable produces on the outcome probability in a cacc_matrix
.
Usage
main_effect(cacc_matrix, iv, value, summary = TRUE)
Arguments
cacc_matrix |
A tibble. The output of the |
iv |
A single variable name contained in a |
value |
A single numeric or character value the |
summary |
Logical. Defaults to |
Value
When summary = TRUE
, returns a tibble with summary stats for the main effect. If summary = FALSE
, returns a tibble containing a single numeric variable, ranging from 0 to 1, containing the main effects of the value
of the selected iv
on the probability of outcome.
References
Hart, T. C., Rennison, C. M., & Miethe, T. D. (2017). Identifying Patterns of Situational Clustering and Contextual Variability in Criminological Data: An Overview of Conjunctive Analysis of Case Configurations. Journal of Contemporary Criminal Justice, 33(2), 112–120. https://doi.org/10.1177/1043986216689746
Examples
main_effect(
cacc_matrix = cacc(onharassment, ivs = sex:privacy, dv = rep_victim),
iv = age,
value = "15-17"
)
main_effect(
cacc_matrix = cacc(onharassment, ivs = sex:privacy, dv = rep_victim),
iv = age,
value = "15-17",
summary = FALSE
)
Profiles of 4174 Spanish students
Description
A dataset containing the demographics, online routines, and self-reported online harassment repeat victimization and offending of 4174 Spanish non-university education students.
Usage
onharassment
Format
A data frame with 4174 rows and 12 variables:
- sex
Factor
. The students' self-reported sex.- age
Factor
. The students' self-reported age- hours
Factor
. The students' self-reported number of daily hours spent online.- snapchat
Factor
. Whether students report using the social media Snapchat on a daily basis.Factor
. Whether students report using the social media Instagram on a daily basis.Factor
. Whether students report using the social media Facebook on a daily basis.Factor
. Whether students report using the social media Twitter on a daily basis.- name
Factor
. Whether students report using their real names on social media.- photos
Factor
. Whether students report uploading personal photos to social media.- privacy
Factor
. Whether students report restricting their social media access to contacts only.- rep_victim
Factor
. Whether students report repeatedly suffering online harassment.- rep_offender
Factor
. Whether students report repeatedly committing online harassment.
Source
Moneva, A., Miró-Llinares, F., & Hart, T. C. (2021). Hunter or Prey? Exploring the situational profiles that define repeated online harassment victims and offenders. Deviant Behavior, 42(11), 1366-1381. https://doi.org/10.1080/01639625.2020.1746135
Density Plot for the Main Effect
Description
Plots an annotated boxplot and kernel density estimate to visualize the distribution of the main effect that a specific value of a variable produces on the outcome probability in a cacc_matrix
.
Usage
plot_effect(cacc_matrix, iv, value)
Arguments
cacc_matrix |
A tibble. The output of the |
iv |
A single variable name contained in a |
value |
A single numeric or character value the |
Value
Returns a ggplot object.
References
Hart, T. C., Rennison, C. M., & Miethe, T. D. (2017). Identifying Patterns of Situational Clustering and Contextual Variability in Criminological Data: An Overview of Conjunctive Analysis of Case Configurations. Journal of Contemporary Criminal Justice, 33(2), 112–120. https://doi.org/10.1177/1043986216689746
Examples
plot_effect(
cacc_matrix = cacc(onharassment, ivs = sex:privacy, dv = rep_victim),
iv = age,
value = "15-17"
)
Lorenz Curve for the Situational Clustering Index
Description
Plots a Lorenz Curve for the Situational Clustering Index (SCI) to visualize the magnitude of the clustering of observations among dominant profiles in a cacc_matrix
.
Usage
plot_sci(cacc_matrix)
Arguments
cacc_matrix |
A tibble. The output of the |
Value
Returns a ggplot object.
References
Hart, T. C. (2019). Identifying Situational Clustering and Quantifying Its Magnitude in Dominant Case Configurations: New Methods for Conjunctive Analysis. Crime & Delinquency, 66(1), 143-159.
Examples
plot_sci(cacc_matrix = cacc(onharassment, ivs = sex:privacy, dv = rep_victim))