LLM Relational Event Models


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Documentation for package ‘llrem’ version 0.1.1

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attach_covariates_df Attach exogenous covariates to a pre-built risk-set data frame
compare_rem_models Forest plot comparing fitted REM coefficients
compute_hazard_surface Compute the full hazard surface over all directed dyads
compute_seq_stat_means Compute sufficient-statistic means for a sequence without fitting a REM
cov_dyad_static Create a static dyad-level covariate
cov_dyad_temporal Create a temporal dyad-level covariate
cov_node_static Create a static node-level covariate
cov_node_temporal Create a temporal node-level covariate
edgelist Militarized Interstate Dispute conflict edgelist
fit_rem Fit a Relational Event Model to an edgelist
fit_rem_sep Fit a Separable Relational Event Model
llm_call Call an LLM provider
llm_provider_anthropic Create an Anthropic Claude LLM provider
llm_provider_bedrock Create an AWS Bedrock LLM provider
llm_provider_gemini Create a Google Gemini LLM provider
llm_provider_grok Create an xAI Grok LLM provider
llm_provider_mock Create a mock LLM provider for testing
llm_provider_ollama Create a local or remote Ollama LLM provider
llm_provider_openai Create an OpenAI LLM provider
llm_provider_openai_compat Create a generic OpenAI-compatible LLM provider
make_behavior_queries Generate plain-language behavioral guidelines from empirical sufficient stats
make_query_predict Query factory: LLM predicts the next event
make_query_roleplay_random Query factory: LLM roleplays as a randomly assigned node
make_query_roleplay_sender Query factory: LLM roleplays as the empirical sender
make_stat_means Compute per-term mean sufficient statistics for realized events
make_suffstats Extract sufficient-statistic means from a REM risk-set data frame
mock_strategy_highest_indegree Mock strategy: pick the valid target with the highest in-degree
mock_strategy_max_id Mock strategy: always pick the largest valid target
mock_strategy_min_id Mock strategy: always pick the smallest valid target
n_nodes Number of nodes in the MID edgelist
prepare_edgelist Normalise a raw edgelist to the standard three-column format
rem_cfg Create a prompt configuration object
rem_covariates Collect covariate objects for use in fit_rem
run_llm_rem Generate an LLM event sequence and fit a REM
run_multiagent_rem Run a multi-agent REM-LLM conflict simulation