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Evolutionary Computation for Rule Discovery in Algorithmic Stock Trading

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2020-03-03

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Harrington, Peter Boyd. 2019. Evolutionary Computation for Rule Discovery in Algorithmic Stock Trading. Master's thesis, Harvard Extension School.

Abstract

The main objective of this project is to demonstrate the construction of a institutional-scale long-short equity strategy. These strategies trade hundreds of highly scrutinized securities. Sorting and keeping track of hundreds of securities involves a large amount of software, and trading in a competitive environment re- quires a large amount of data analysis. This thesis has two components: a software engineering and one financial data analysis.

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evolutionary computing, trading, equities

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