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Artificial Intelligence CSC 361

Artificial Intelligence CSC 361. Dr. Yousef Al-Ohali Computer Science Depart. CCIS – King Saud University Saudi Arabia yousef@ccis.edu.sa http://faculty.ksu.edu.sa/YAlohali. Intelligent Systems Part II: Neural Nets. Developing Intelligent Program Systems.

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Artificial Intelligence CSC 361

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  1. Artificial Intelligence CSC 361 Dr. Yousef Al-Ohali Computer Science Depart. CCIS – King Saud University Saudi Arabia yousef@ccis.edu.sa http://faculty.ksu.edu.sa/YAlohali

  2. Intelligent SystemsPart II: Neural Nets

  3. Developing Intelligent Program Systems Machine Learning : Neural Nets • Artificial Neural Networks:Artificial Neural Networks are crude attempts to model the highly massive parallel and distributed processing we believe takes place in the brain. • Two main areas of activity: • Biological: Try to model biological neural systems. • Computational: develop powerful applications.

  4. Developing Intelligent Program Systems Machine Learning : Neural Nets Neural nets can be used to answer the following: • Pattern recognition: Does that image contain a face? • Classification problems: Is this cell defective? • Prediction: Given these symptoms, the patient has disease X • Forecasting: predicting behavior of stock market • Handwriting: is character recognized? • Optimization: Find the shortest path for the TSP.

  5. Developing Intelligent Program Systems Machine Learning : Neural Nets Strength and Weaknesses of ANN • Examples may be described by a large number of attributes (e.g., pixels in an image). • Data may contain errors. • The time for training may be extremely long. • Evaluating the network for a new example is relatively fast. • Interpretability of the final hypothesis is not relevant (the NN is treated as a black box).

  6. Artificial Neural Networks Biological Neuron

  7. The Neuron • The neuron receives nerve impulses through its dendrites. It then sends the nerve impulses through its axon to the terminal buttons where neurotransmitters are released to simulate other neurons.

  8. The neuron • The unique components are: • Cell body or soma which contains the nucleus • The dendrites • The axon • The synapses

  9. The neuron - dendrites • The dendrites are short fibers (surrounding the cell body) that receive messages • The dendrites are very receptive to connections from other neurons. • The dendrites carry signals from the synapses to the soma.

  10. The neuron - axon • The axon is a long extension from the soma that transmits messages • Each neuron has only one axon. • The axon carries action potentials from the soma to the synapses.

  11. The neuron - synapses • The synapses are the connections made by an axon to another neuron. They are tiny gaps between axons and dendrites (with chemical bridges) that transmit messages • A synapse is called excitatory if it raises the local membrane potential of the post synaptic cell. • Inhibitory if the potential is lowered.

  12. Artificial Neural Networks History of ANNs

  13. History of Artificial Neural Networks • 1943: McCulloch and Pitts proposed a model of a neuron --> Perceptron • 1960s: Widrow and Hoff explored Perceptron networks (which they called “Adalines”) and the delta rule. • 1962: Rosenblatt proved the convergence of the perceptron training rule. • 1969: Minsky and Papert showed that the Perceptron cannot deal with nonlinearly-separable data sets---even those that represent simple function such as X-OR. • 1970-1985: Very little research on Neural Nets • 1986: Invention of Backpropagation [Rumelhart and McClelland, but also Parker and earlier on: Werbos] which can learn from nonlinearly-separable data sets. • Since 1985: A lot of research in Neural Nets

  14. Artificial Neural Networks artificial Neurons

  15. x1 w1 f() Inputs Output=f() xp wp xiwi w0 1 Artificial Neuron • Incoming signals to a unit are combined by summing their weighted values • Output function: Activation functions include Step function, Linear function, Sigmoid function, …

  16. Activation functions Linear function Sign function Sigmoid (logistic) function Step function sign(x) = +1, if x >= 0 -1, if x < 0 step(x) = 1, if x >= threshold 0, if x < threshold (in picture above, threshold = 0) pl(x) =x sigmoid(x) = 1/(1+e-x) Adding an extra input with activation a0 = -1 and weight W0,j = t (called the bias weight) is equivalent to having a threshold at t. This way we can always assume a 0 threshold.

  17. dendrites axon cell synapse dendrites x0 w0 Threshold units o xn wn Real vs. Artificial Neurons

  18. Neurons as Universal computing machine • In 1943, McCulloch and Pitts showed that a synchronous assembly of such neurons is a universal computing machine. That is, any Boolean function can be implemented with threshold (step function) units.

  19. -1 x1 1 W=1.5 o(x1,x2) x2 1 Implementing AND

  20. -1 x1 1 W=0.5 o(x1,x2) x2 1 o(x1,x2) = 1 if –0.5 + x1 + x2 > 0 = 0 otherwise Implementing OR

  21. -1 W=-0.5 -1 o(x1) x1 Implementing NOT

  22. -1 0.5 1 x1 x1 or x2 1 -1 x2 1.5 1 1 x3 (x1 or x2) and x3 Implementing more complex Boolean functions

  23. Artificial Neural Networks • When using ANN, we have to define: • Artificial Neuron Model • ANN Architecture • Learning mode

  24. Artificial Neural Networks ANN Architecture

  25. ANN Architecture • Feedforward: Links are unidirectional, and there are no cycles, i.e., the network is a directed acyclic graph (DAG). Units are arranged in layers, and each unit is linked only to units in the next layer. There is no internal state other than the weights. • Recurrent: Links can form arbitrary topologies, which can implement memory. Behavior can become unstable, oscillatory, or chaotic.

  26. Output layer fully connected Hidden layers Input layer sparsely connected Artificial Neural NetworkFeedforward Network

  27. Artificial Neural NetworkFeedForward Architecture • Information flow unidirectional • Multi-Layer Perceptron (MLP) • Radial Basis Function (RBF) • Kohonen Self-Organising Map (SOM)

  28. Artificial Neural NetworkRecurrent Architecture • Feedback connections • Hopfield Neural Networks: Associative memory • Adaptive Resonance Theory (ART)

  29. Artificial Neural NetworkLearning paradigms • Supervised learning: • Teacher presents ANN input-output pairs, • ANN weights adjusted according to error • Classification • Control • Function approximation • Associative memory • Unsupervised learning: • no teacher • Clustering

  30. ANN capabilities • Learning • Approximate reasoning • Generalisation capability • Noise filtering • Parallel processing • Distributed knowledge base • Fault tolerance

  31. Main Problems with ANN • Contrary to Expert sytems, with ANN the Knowledge base is not transparent (black box) • Learning sometimes difficult/slow • Limited storage capability

  32. Some applications of ANNs • Pronunciation: NETtalk program (Sejnowski & Rosenberg 1987) is a neural network that learns to pronounce written text: maps characters strings into phonemes (basic sound elements) for learning speech from text • Speech recognition • Handwritten character recognition:a network designed to read zip codes on hand-addressed envelops • ALVINN (Pomerleau) is a neural network used to control vehicles steering direction so as to follow road by staying in the middle of its lane • Face recognition • Backgammon learning program • Forecasting e.g., predicting behavior of stock market

  33. When to use ANNs? • Input is high-dimensional discrete or real-valued (e.g. raw sensor input). • Inputs can be highly correlated or independent. • Output is discrete or real valued • Output is a vector of values • Possibly noisy data. Data may contain errors • Form of target function is unknown • Long training time are acceptable • Fast evaluation of target function is required • Human readability of learned target function is unimportant ⇒ ANN is much like a black-box

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