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Q. |
## Suppose, you got a situation where you find that your linear regression model is under fitting the data. In such situation which of the following options would you consider?1. I will add more variables2. I will start introducing polynomial degree variables3. I will remove some variables |

A. | 1 and 2 |

B. | 2 and 3 |

C. | 1 and 3 |

D. | 1, 2 and 3 |

Answer» A. 1 and 2 |

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- Suppose, you got a situation where you find that your linear regression model is under fitting the data. In such situation which of the following options would you consider?1. I will add more variables2. I will start introducing polynomial degree variables3. I will remove some variables
- Suppose, you got a situation where you find that your linear regression model is under fitting the data. In such situation which of the following options would you consider? 1. I will add more variables 2. I will start introducing polynomial degree variables 3. I will remove some variables
- Suppose, you got a situation where you find that your linear regression model is under fitting the data. In such situation which of the following options would you consider?
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