We use an adversarial expert based online learning algorithm to learn the optimal parameters required to maximise wealth trading zero-cost portfolio strategies. The learning algorithm is used to determine the relative population dynamics of technical trading strategies that can survive historical back-testing as well as form an overall aggregated portfolio trading strategy from the set of underlying trading strategies implemented on daily and intraday Johannesburg Stock Exchange data. The resulting population time-series are investigated using unsupervised learning for dimensionality reduction and visualisation. A key contribution is that the overall aggregated trading strategies are tested for statistical arbitrage using a novel hypothesis...
Most financial firms use algorithms to buy and sell financial assets. It is possible for amateur inv...
Pairs trading strategy takes advantage of diversification across stocks, to produce a low-volatility...
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...
From experimental evaluation, we reasonably infer that online trading algorithms can beat the market...
Abstract: This thesis contributes to the problem of equity portfolio management using computational ...
This project report is published in fulfillment of a Bachelor of Science Honours degree in Statistic...
A thesis submitted in fulfilment of the requirements for the degree of Doctor of Philosophy in the ...
Honors (Bachelor's)StatisticsEconomicsUniversity of Michiganhttp://deepblue.lib.umich.edu/bitstream/...
Adviser: Dr. Arindam BanerjeePeople make and lose vast sums of money every day on stock exchanges ar...
Traders utilize strategies by using a mix of market and limit orders to generate profits. There are ...
We replicate and extend the adversarial expert based learning approach of Györfi et al to the situat...
The dissertation implements a model driven statistical arbitrage strategy that uses the principal co...
The potential of machine learning to automate and control nonlinear, complex systems is well establi...
A dissertation submitted in fulfilment of the requirements for the degree of Master of Science to the...
More than 70% of today's stocks trade volume is attributable to automatic order execution by trading...
Most financial firms use algorithms to buy and sell financial assets. It is possible for amateur inv...
Pairs trading strategy takes advantage of diversification across stocks, to produce a low-volatility...
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...
From experimental evaluation, we reasonably infer that online trading algorithms can beat the market...
Abstract: This thesis contributes to the problem of equity portfolio management using computational ...
This project report is published in fulfillment of a Bachelor of Science Honours degree in Statistic...
A thesis submitted in fulfilment of the requirements for the degree of Doctor of Philosophy in the ...
Honors (Bachelor's)StatisticsEconomicsUniversity of Michiganhttp://deepblue.lib.umich.edu/bitstream/...
Adviser: Dr. Arindam BanerjeePeople make and lose vast sums of money every day on stock exchanges ar...
Traders utilize strategies by using a mix of market and limit orders to generate profits. There are ...
We replicate and extend the adversarial expert based learning approach of Györfi et al to the situat...
The dissertation implements a model driven statistical arbitrage strategy that uses the principal co...
The potential of machine learning to automate and control nonlinear, complex systems is well establi...
A dissertation submitted in fulfilment of the requirements for the degree of Master of Science to the...
More than 70% of today's stocks trade volume is attributable to automatic order execution by trading...
Most financial firms use algorithms to buy and sell financial assets. It is possible for amateur inv...
Pairs trading strategy takes advantage of diversification across stocks, to produce a low-volatility...
The PhD dissertation research topics aim at developing algorithmic trading strategies and demonstrat...