Which of the learning methodology applies conditional probability of all the variables with respective the dependent variable?
A. Reinforcement learning
B. Unsupervised learning
C. Artificial learning
D. Supervised learning
Answer: D
Explanation:
Supervised learning is a type of machine learning where we train a model using labeled data. In this learning paradigm, the model learns from the training data to make predictions or infer mappings. Conditional probability often plays a role in this, especially in algorithms like Naive Bayes, where the goal is to compute the probability of a certain class given the features (variables) of the data, which is fundamentally a conditional probability.
Here’s a brief rundown of the other options:
A. Reinforcement learning: This is about agents who take actions in an environment to maximize cumulative reward. It’s not centered around conditional probability of variables.
B. Unsupervised learning: This is about finding patterns in data without labeled responses. Methods such as clustering and dimensionality reduction fall into this category.
C. Artificial learning: This is not a standard term in the field of machine learning or data science.
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