| activationsCueSet | Calculate the change in activation for a specific cue or set of cues. |
| activationsEvents | Calculate the activations for each learning event. |
| activationsMatrix | Calculate the activations for one or a set of cues. |
| activationsOutcomes | Calculate the activations for all outcomes in the data. |
| check | Remove empty cues and/or outcomes. |
| checkWM | Check whether cues and outcomes exist in a weight matrix and optionally add. |
| createTrainingData | Create event training data from a frequency data frame. |
| createWM | Create empty weight matrix based on a set of cues and outcomes. |
| cueWindow | Create a 'cue window', for overlapping or continuous cues. |
| dat | Simulated learning data. |
| edl | Toolbox for Error-Driven Learning Simulations with Two-Layer Networks |
| getActivations | Function to calculate the activations. |
| getCues | Extract cues from list of weightmatrices. |
| getLambda | Retrieve the lambda values for all or specific outcomes for each learning event. |
| getOutcomes | Extract outcomes from list of weightmatrices. |
| getUpdate | Retrieve the weight updates and their change for each learning event. |
| getValues | Retrieve all cues from a vector of text strings. |
| getWeightsByCue | Extract the change of connection weights between a specific cue and all outcomes. |
| getWeightsByOutcome | Extract the change of connection weights between all cues and a specific outcome. |
| getWM | Retrieve all cues from a vector of text strings. |
| luceChoice | Function implementing the Luce choice rule. |
| plotActivations | Visualize the change of connection weights between a specific outcome and all cues. |
| plotCueWeights | Visualize the change of connection weights between a specific cue and all outcomes. |
| plotNetwork | Return strong weights. |
| plotOutcomeWeights | Visualize the change of connection weights between a specific outcome and all cues. |
| RWlearning | Function implementing the Rescorla-Wagner learning. |
| RWlearningMatrix | Function implementing the Rescorla-Wagner learning. |
| RWlearningNoCueCompetition | Function implementing the Rescorla-Wagner learning equations without cue competition (for illustration purposes). |
| RWlearningNoOutcomeCompetition | Function implementing the Rescorla-Wagner learning equetions without outcome competition (for illustration purposes). |
| setBackground | Set value background cue. |
| updateWeights | Function implementing the Rescorla-Wagner learning for a single learning event. |
| updateWeightsNoCueCompetition | Function implementing the Rescorla-Wagner learning equations without cue competition for a single learning event. |
| updateWeightsNoOutcomeCompetition | Function implementing the Rescorla-Wagner learning equations without outcome competition (for illustration purposes) for a single learning event. |