Artificial Intelligence Programming Practice Exam 2025 - Free AI Programming Practice Questions and Study Guide.

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What describes an Adaline (Adaptive Linear Neuron)?

A multi-layer neural network

A single layer neural network with a weight, bias, and summation function

Adaline, which stands for Adaptive Linear Neuron, is best characterized as a single-layer neural network. It operates by using a linear combination of input features, which involves weights and a bias term that together produce the neuron's output. This output is then typically passed through an activation function, although in the original formulation of Adaline, it used a linear activation.

The significant aspect of Adaline is that it employs a learning rule based on gradient descent, allowing it to adjust weights dynamically based on the error in its output compared to the expected result. This makes it suitable for problems where you want a straightforward, linear decision boundary.

The other choices do not accurately capture the essence of Adaline. A multi-layer neural network is more complex and includes multiple interconnected layers, while Adaline is fundamentally a single-layer structure. The mention of heuristics for optimizing search problems or algorithms for unsupervised classification does not relate to the defining characteristics of an Adaline. Thus, defining it as a single-layer neural network with weight, bias, and summation function captures its primary attributes and function within AI and machine learning contexts.

A heuristic for optimizing search problems

An algorithm for unsupervised classification

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