VTU Module-3 | Aritificil Nueral Network
Module-3
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2018 Scheme | CSE Department
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18CS71 | ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING | Module-3 VTU Notes
Artificial Neural Networks (ANNs) represent a fundamental paradigm in the field of artificial intelligence, drawing inspiration from the structure and function of the human brain. This transformative approach to machine learning has gained widespread application in solving complex problems across various domains. The foundation of ANNs lies in their ability to learn and generalize patterns from data, making them adept at tasks such as image recognition, natural language processing, and predictive analytics.
Introduction:
Artificial Neural Networks are computational models composed of interconnected nodes, or neurons, organized into layers. These layers typically include an input layer, one or more hidden layers, and an output layer. Information flows through the network, with each connection assigned a weight that adjusts during training. ANNs excel at capturing intricate relationships within data and adapting their internal parameters to make accurate predictions or classifications.
NN Representation:
The representation of a neural network involves the arrangement of nodes and connections, forming a topology that determines the network's capacity to model complex relationships. The input layer receives raw data, which is processed through the hidden layers using weighted connections. The output layer produces the final result, whether it be a classification, regression, or other relevant output.
Appropriate Problems:
Artificial Neural Networks are suitable for solving a wide range of problems, especially those characterized by large and complex datasets. Applications span various domains, including computer vision, speech recognition, financial forecasting, and medical diagnosis. ANNs thrive in scenarios where traditional rule-based programming falls short, allowing them to uncover intricate patterns and make predictions based on learned associations.
Perceptrons:
Perceptrons serve as the fundamental building blocks of neural networks. These are individual neurons that take input signals, apply weights, and produce an output through an activation function. While a single perceptron is limited in its capabilities, the aggregation of multiple perceptrons into layers enables neural networks to model sophisticated relationships and make high-level decisions.
Backpropagation Algorithm:
Backpropagation is a key training algorithm for neural networks. It involves a two-phase process where the network first makes predictions, and then the error is backpropagated through the network to adjust the weights systematically. This iterative process continues until the network converges to a state where the error is minimized. Backpropagation plays a crucial role in enhancing the network's ability to generalize and make accurate predictions on new, unseen data.
In conclusion, Artificial Neural Networks represent a powerful tool in the realm of machine learning, capable of addressing complex problems through their ability to learn and adapt from data. Their versatility, coupled with advancements in training algorithms like backpropagation, positions ANNs as a cornerstone in the pursuit of intelligent systems across diverse domains.
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