Convolutional Neural Network
Across
- 4. - regularization for feature selection
- 8. - small matrix used to detect patterns
- 9. - Updates weights using gradients
- 10. - Avoid vanishing gradient
Down
- 1. - multi-scale feature extraction
- 2. - Uses small 3×3 filters and deep architecture
- 3. - alternate name for depth of the feature map
- 5. - Converts outputs into probabilities
- 6. - Converts multidimensional data into 1D for dense layers.
- 7. - Randomly disables neurons during training to prevent overfitting.