Neural Networks for Time Series Prediction
15-486/782: Artificial Neural Networks Fall 2006 (based on earlier slides by Dave Touretzky and Kornel Laskowski) What is a Time Series? A sequence of vectors (or scalars) which depend on time t. In this ... • air temperature in a building These phenomena may be discrete or continuous. 3. Discrete Phenomena
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