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University of Birmingham > Talks@bham > Data Science and Computational Statistics Seminar > Echo state networks applied to market making problems
Echo state networks applied to market making problemsAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Hong Duong. In this talk, we discuss how a special type of recurrent neural network called an Echo State Network (ESN) can be applied to supervised learning problems involving time series. We train the ESN using linear regression, and despite the training process being entirely linear, the ESN retains the universal approximation property. We discuss briefly how an ESN can be used to solve supervised learning problems, before moving onto the more complex problem of reinforcement learning. We demonstrate the theory by applying the ESN to a simple market making problem that appears in mathematical finance. This talk is part of the Data Science and Computational Statistics Seminar series. This talk is included in these lists:
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