π Linear regression is used to predict a continuous outcome based on independent variables.
π Logistic regression is used to predict a binary outcome, especially for classification problems.
π Linear regression is used to model the relationship between the size and price of houses.
π Logistic regression can be used to predict customer behavior or identify spam emails.
β¨ By fitting a line of best fit to the data, linear regression can be used to predict the price of a new house based on its size.
π Linear regression is used to predict continuous outcomes by modeling the relationship between variables.
π Logistic regression is used to predict binary outcomes by modeling the relationship between variables.
π Logistic regression can be used to predict the probability of a certain outcome.
π Linear regression and logistic regression are two different models used for different types of problems.
π‘ Logistic regression can be used to model various types of outcomes, not just binary outcomes.
β Linear and logistic regression can be used together in multi-class classification problems.
π Linear regression is used to predict numerical values, while logistic regression is used to predict categorical values.
πππ Logistic regression can be used to predict the type of fruit based on its color, shape, and other features.
π°π Both linear and logistic regression are valuable tools in data science for predicting stock prices and customer churn.
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