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Q. |
## Suppose you are using RBF kernel in SVM with high Gamma value. What does this signify? |

A. | The model would consider even far away points from hyperplane for modeling |

B. | The model would consider only the points close to the hyperplane for modeling |

C. | The model would not be affected by distance of points from hyperplane for modeling |

D. | None of the above |

Answer» B. The model would consider only the points close to the hyperplane for modeling |

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