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Q. |
## Suppose you are using a Linear SVM classifier with 2 class classification problem. Now you have been given the following data in which some points are circled red that are representing support vectors.If you remove the following any one red points from the data. Does the decision boundary will change? |

A. | yes |

B. | no |

Answer» A. yes |

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