--- title: "Getting Started with conflibertR" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Getting Started with conflibertR} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>", eval = FALSE ) ``` conflibertR brings [ConfliBERT](https://huggingface.co/eventdata-utd) --- a transformer model purpose-built for conflict and political violence text --- into R. This vignette walks through every major capability of the package: pretrained inference, benchmarking, fine-tuning, and model comparison. ## Setup Install the Python backend once. This creates a dedicated conda environment with PyTorch, HuggingFace Transformers, and related dependencies. Restart R after installation. ```{r setup} library(conflibertR) # Run once, then restart R conflibert_install() ``` ## Named Entity Recognition Extract entities such as persons, organizations, locations, weapons, and temporal expressions from conflict-related text. ```{r ner-single} ner_results <- conflibert_ner( "The United Nations deployed peacekeepers to eastern Congo after rebel forces attacked Goma on Tuesday." ) ner_results ``` The function is vectorized --- pass multiple texts to process them in one call. ```{r ner-batch} ner_batch <- conflibert_ner(c( "NATO forces launched airstrikes near Tripoli in March 2024.", "President Zelenskyy met with General Syrskyi in Kyiv." )) ner_batch ``` ## Binary Classification Determine whether a piece of text describes a conflict event or not. Each row returns a label, numeric class, confidence score, and per-class probabilities. ```{r classify} classify_results <- conflibert_classify(c( "Armed militants stormed a military outpost killing twelve soldiers.", "The European Central Bank held interest rates steady at 4.5 percent.", "Protesters clashed with riot police outside the parliament building.", "A new trade agreement was signed between Japan and Australia." )) classify_results ``` ## Multilabel Event Classification Score text against four event categories --- Armed Assault, Bombing or Explosion, Kidnapping, and Other --- each evaluated independently. ```{r multilabel} event_results <- conflibert_multilabel(c( "A car bomb exploded near the government ministry in Baghdad.", "Gunmen kidnapped three aid workers travelling through the Sahel region." )) event_results ``` ## Question Answering Extract answers directly from a passage of conflict-related text. ```{r qa} context <- "On 15 September 2023, ethnic clashes erupted in Manipur, India. The Indian Army deployed two battalions to restore order. At least 60 people were killed and over 200 injured in the violence." conflibert_qa(context, "How many people were killed?") conflibert_qa(context, "Who was deployed to restore order?") conflibert_qa(context, "Where did the clashes occur?") ``` ## Benchmarking the Pretrained Classifier Evaluate the pretrained binary classifier against your own labeled data. The package includes small example datasets you can use to get started. ```{r benchmark} data <- conflibert_example("binary") bench <- conflibert_benchmark(data$test$text, data$test$label) bench ``` ## Fine-Tuning a Custom Classifier Train your own binary classifier on labeled data. The example dataset ships with the package: 80 training, 20 dev, and 20 test examples. ```{r finetune-binary} data <- conflibert_example("binary") result <- conflibert_finetune( train = data$train, dev = data$dev, test = data$test, model = "ConfliBERT", task = "binary", epochs = 3 ) cat("Accuracy:", result$metrics$accuracy, "\n") cat("F1 Score:", result$metrics$f1, "\n") ``` The returned list also contains raw predictions and class probabilities for the test set, plus the path to the saved model checkpoint. ```{r finetune-inspect} # Per-sample predicted labels head(result$predictions) # Class probability matrix (rows = samples, columns = classes) head(result$probabilities) # Saved model directory (NULL if save_dir was not set) result$model_dir ``` ## Comparing Multiple Models Pit ConfliBERT against general-purpose transformers on the same task. `conflibert_compare()` fine-tunes each model and returns a tidy comparison table. ```{r compare} comparison <- conflibert_compare( train = data$train, dev = data$dev, test = data$test, models = c("ConfliBERT", "BERT Base Uncased", "DistilBERT Base"), task = "binary", epochs = 3 ) comparison ``` See all available base models with: ```{r models} conflibert_models() ``` ## Multiclass Fine-Tuning The package also supports multiclass classification. The bundled multiclass dataset has four event types: Diplomacy, Armed Conflict, Protest, and Humanitarian. ```{r finetune-multiclass} mc_data <- conflibert_example("multiclass") mc_result <- conflibert_finetune( train = mc_data$train, dev = mc_data$dev, test = mc_data$test, model = "ConfliBERT", task = "multiclass", epochs = 3 ) cat("Multiclass Accuracy:", mc_result$metrics$accuracy, "\n") cat("Multiclass F1: ", mc_result$metrics$f1, "\n") ``` ## Summary | Function | Task | |---------------------------|---------------------------------------| | `conflibert_ner()` | Named entity recognition | | `conflibert_classify()` | Binary conflict classification | | `conflibert_multilabel()` | Multilabel event type scoring | | `conflibert_qa()` | Extractive question answering | | `conflibert_benchmark()` | Evaluate pretrained classifier | | `conflibert_finetune()` | Train a custom classifier | | `conflibert_compare()` | Compare multiple model architectures | | `conflibert_example()` | Load bundled example datasets | | `conflibert_models()` | List available base models | For more details, see the [package repository](https://github.com/shreyasmeher/conflibertR) and the reference paper: Brandt et al. (2025), "Extractive versus Generative Language Models for Political Conflict Text Classification," *Political Analysis*.