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icarm provides a unified, general-purpose R framework for Interpretable, Contextual-Accountable and Responsible Machine Learning (ICARM) that works with any clean tabular data across any application domain.
“Algorithmic decisions must be interpretable, auditable, and fair — regardless of domain.”
| Capability | icarm | civic.icarm | DALEX | fairmodels | tidymodels |
|---|---|---|---|---|---|
| Auto-detects task type | Yes | Yes | No | No | No |
| Interpretable + extended models | Yes | Interpretable only | No | No | No |
| Random Forest / XGBoost / SVM | Yes | No | No | No | No |
| Group fairness metrics | Yes | Yes | No | Yes | No |
| Probability calibration | Yes | Yes | No | No | Yes |
| JSON audit trail | Yes | Yes | No | No | No |
| Accountability scorecard | Yes | Yes | No | No | No |
| General-purpose (any domain) | Yes | Civic/education focus | No | No | No |
icarm is the general-purpose sister package to civic.icarm.
# From CRAN (once accepted)
install.packages("icarm")
# Development version from GitHub
remotes::install_github("Olawaleawe/icarm")library(icarm)
# Works with ANY tabular data — task auto-detected
m <- icarm_fit(default ~ ., data = icarm_financial)
# Explain — what drives predictions?
ex <- icarm_explain(m, data = icarm_financial)
icarm_plot_importance(ex)
# Fairness audit across ethnicity
fair <- icarm_fairness(m, icarm_financial,
outcome = "default",
protected = "ethnicity",
positive = "Yes")
icarm_plot_fairness(fair, metric = "dp_ratio", ref_line = 0.8)
# Full accountability scorecard
icarm_scorecard(m, icarm_financial,
outcome = "default",
protected = "ethnicity",
positive = "Yes",
project = "Loan Default Analysis")# Interpretable (ICARM-compliant)
icarm_fit(y ~ ., data, model = "cart") # Decision tree
icarm_fit(y ~ ., data, model = "logistic") # Logistic regression
icarm_fit(y ~ ., data, model = "logistic_l1") # L1-penalised logistic
icarm_fit(y ~ ., data, model = "linear") # Linear regression
icarm_fit(y ~ ., data, model = "gam") # Generalised additive
icarm_fit(y ~ ., data, model = "multinomial") # Multinomial logistic
# Extended (post-hoc explanation recommended)
icarm_fit(y ~ ., data, model = "random_forest") # Random forest
icarm_fit(y ~ ., data, model = "xgboost") # XGBoost
icarm_fit(y ~ ., data, model = "svm") # Support vector machine| Dataset | Rows | Domain | Outcome | Protected attrs |
|---|---|---|---|---|
icarm_racism_survey |
150 | Social science | racism_impact, migrant_status, police_stop | gender, skin_color |
icarm_medical |
500 | Healthcare | readmitted (Yes/No) | gender, insurance |
icarm_financial |
1,000 | Finance | default (Yes/No) | gender, ethnicity |
| Function | Description |
|---|---|
icarm_fit() |
Train any model — auto-detects task |
icarm_split() |
Reproducible train/test split |
icarm_metrics() |
Performance metrics for any task |
icarm_explain() |
Global feature importance |
icarm_explain_local() |
Local per-observation explanation |
icarm_fairness() |
Group equity metrics |
icarm_equity_summary() |
Pass/fail fairness flags |
icarm_calibrate() |
Probability calibration (Brier, ECE) |
icarm_thresholds() |
Threshold sweep analysis |
icarm_compare() |
Side-by-side model comparison |
icarm_audit() |
Reproducible JSON audit trail |
icarm_scorecard() |
Full accountability report |
civic.icarm is the civic and political education variant of icarm, focused on democratic judgment formation and DataCitizen-Pro:
install.packages("civic.icarm")Prof. Dr. Olushina Olawale Awe Alexander von Humboldt Foundation Visiting Professor Ludwigsburg University of Education (LUE), Germany olawaleawe@gmail.com
@software{awe2025icarm,
author = {Awe, Olushina Olawale},
title = {{icarm}: Interpretable, Accountable and
Responsible Machine Learning},
year = {2025},
url = {https://github.com/Olawaleawe/icarm},
note = {R package v0.1.0}
}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.
Health stats visible at Monitor.