| BradleyTerryScalable-package | A package for fitting the Bradley-Terry model to (potentially) large and sparse data sets. |
| BradleyTerryScalable | A package for fitting the Bradley-Terry model to (potentially) large and sparse data sets. |
| btdata | Create a btdata object |
| btfit | Fits the Bradley-Terry model |
| btprob | Calculates Bradley-Terry probabilities |
| BT_EM | Fit the Bradley-Terry model using the EM or MM algorithm |
| citations | Statistics Journal Citation Data from Stigler (1994) |
| codes_to_counts | Converts data frame with a code for wins to counts of wins |
| coef.btfit | Extract coefficients of a 'btfit' object |
| fitted.btfit | Fitted Method for "btfit" |
| select_components | Subset a btdata object |
| simulate.btfit | This function simulates one or more pseudo-random datasets from a specified Bradley-Terry model. Counts are simulated from independent binomial distributions, with the binomial probabilities and totals specified through the function arguments. |
| simulate_BT | This function simulates one or more pseudo-random datasets from a specified Bradley-Terry model. Counts are simulated from independent binomial distributions, with the binomial probabilities and totals specified through the function arguments. |
| summary.btdata | Create a btdata object |
| summary.btfit | Summarizing Bradley-Terry Fits |
| toy_data | A toy data set for the 'BradleyTerryScalable' package |
| vcov.btfit | Calculate variance-covariance matrix for a btfit object |