- #1
shivajikobardan
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Because we use updated bias and not the original bias? Please clear my confusion
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The table for perceptron of AND gate is wrong for B because it does not accurately represent the expected output for the AND gate. The perceptron is typically used for classification tasks and relies on a linear decision boundary, which may not be suitable for modeling the AND gate.
The table for perceptron of AND gate can be fixed by adjusting the weights and biases of the perceptron. By tweaking these parameters, the perceptron can learn to accurately classify input data for the AND gate.
Yes, perceptrons can be used for other logic gates such as OR, NOT, and XOR gates. However, the weights and biases would need to be adjusted accordingly to accurately model the desired logic gate.
No, there are other types of neural networks such as multi-layer perceptrons and deep neural networks that can also model logic gates. However, perceptrons are a simpler and more basic form of neural network, making them suitable for simple tasks like logic gates.
Understanding the limitations of using a perceptron for logic gates is important because it can help us understand the capabilities and limitations of different types of neural networks. It also showcases the importance of choosing the right type of neural network for the task at hand.