calibrationsplots
Calibrationsplots are graphical representations used to assess the calibration of a probabilistic model. They help visualize how well the predicted probabilities of an event align with its actual observed frequencies. The most common type of calibrationsplot is the reliability diagram.
A reliability diagram plots the predicted probability on the x-axis against the observed frequency of the event
Beyond reliability diagrams, other calibrationsplots might include:
Expected calibration error (ECE) plots, which summarize the miscalibration across different probability bins.
Impact of calibration plots, which assess how calibration affects downstream tasks or metrics.
These plots are crucial in machine learning, particularly for classification tasks where confidence scores or probabilities