
Learning Bayesian Models with R
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To understand the concepts easily, let's take the case of binary classification, where the task is to classify an input feature vector into one of the two states: -1 or 1. Assume that 1 is the positive class and -1 is the negative class. The predicted output contains only -1 or 1, but there can be two types of errors. Some of the -1 in the test set could be predicted as 1. This is called a false positive or type I error. Similarly, some of the 1 in the test set could be predicted as -1. This is called a false negative or type II error. These two types of errors can be represented in the case of binary classification as a confusion matrix as shown below.
Confusion Matrix |
Predicted Class | ||
---|---|---|---|
Positive |
Negative | ||
Actual Class |
Positive |
TP |
FN |
Negative |
FP |
TN |
From the confusion matrix, we can derive the following performance metrics:
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