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In a real-world application, which of the following scenarios is most suitable f
In a real-world application, which of the following scenarios is most suitable for linear regression?
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In a real-world application, which of the following scenarios is most suitable for linear regression?
Classifying emails as spam or not spam
Predicting house prices based on features like size and location
Segmenting customers into different groups
Identifying anomalies in network traffic
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Linear regression is suitable for predicting continuous outcomes, such as house prices based on various features.
Questions & Step-by-step Solutions
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Q: In a real-world application, which of the following scenarios is most suitable for linear regression?
Solution:
Linear regression is suitable for predicting continuous outcomes, such as house prices based on various features.
Steps: 5
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Step 1: Understand what linear regression is. It is a method used to predict a continuous outcome based on one or more input features.
Step 2: Identify the type of outcome you want to predict. Linear regression is best for predicting continuous values, like prices or measurements.
Step 3: Consider examples of continuous outcomes. For instance, predicting house prices based on features like size, location, and number of bedrooms.
Step 4: Check if the relationship between the input features and the outcome is linear. Linear regression assumes a straight-line relationship.
Step 5: Conclude that if you have a situation where you want to predict a continuous value based on other variables, linear regression is suitable.
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