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CIS 678 Artificial Intelligence problems deduction, reasoning knowledge representation planning learning natural language processing motion and manipulation social intelligence creativity
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CIS 678 Learning why is it better than pre-programming a solution? where is it better than pre-programming a solution? what are its shortcomings?
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CIS 678 Machine Learning Model a real life process by assuming a distribution and attempt to learn parameters
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CIS 678 What do we need? Knowledge of statistics and probability Ability to process data Ability to apply principles of mathematics Statistics Math Computer Science ML
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CIS 678 What can machine learning do? Classification –Predicting tax cheats –Quality control Association analysis –Encourage likely purchases –Identify unusual combinations
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CIS 678 What can machine learning do? Regression –Prediction –Charting relationship Clustering (unsupervised) –Grouping similar objects –Describing groups
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CIS 678 Classification discriminant prediction pattern recognition –optical character recognition –fingerprint, face and speech recognition compression outlier detection
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CIS 678 Other concepts supervised versus unsupervised predictive versus descriptive reinforcement learning (game playing)
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CIS 678 Probability sample space – the universe of possible outcomes events –a single outcome –example: E = the event that we roll a six probability –a number that is associated with the chances of a particular outcome –example: P(E) = 1/6
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