diff --git a/contrib/machine-learning/Naive_Bayes_Classifiers.md b/contrib/machine-learning/Naive_Bayes_Classifiers.md index 1bbb1ec..d986ade 100644 --- a/contrib/machine-learning/Naive_Bayes_Classifiers.md +++ b/contrib/machine-learning/Naive_Bayes_Classifiers.md @@ -126,10 +126,11 @@ Used for binary/boolean features, where features represent binary occurrences (e * Formula: The likelihood of the features given the class is computed using the Bernoulli distribution formula: $$ -P(x_i | C) = {P^{x_i}}_{i,C} (1 - P_{i, C})^{(1 - x_i)} +P(x_i | C) = {P_{i,C}^{x_i}} (1 - P_{i, C})^{(1 - x_i)} $$ where P(𝑖,𝐶) is the probability of feature 𝑥𝑖 being 1 in class C. + ## Advantages of Naive Bayes Classifier * Easy to implement and computationally efficient. * Effective in cases with a large number of features.