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Invite colleaguesUsing neural networks and Monte Carlo techniques in data science: The value of Google DeepMind in general use
Abstract
Google DeepMind recently unveiled AlphaGo, a body of artificial intelligence (AI) work that purportedly beat world champion Go player, Lee See-Do. It is brilliant insofar as it uses Monte Carlo Search in conjunction with AI to work an optimal path through a near infinitesimal number of moves to triumph over its human adversary. At first glance Monte Carlo Search may seem to be the same as Monte Carlo Simulation but it is far more useful for finding a path to a particular classification. In our example, the classification of interest is the likelihood that a customer will convert to an active customer given a high bid on a digital media advertisement, subject to knowing the potential customer’s environment and journey steps thus far. Using neural networks we are able to produce ‘fiercely accurate’ models that can predict the likelihood of conversion, bringing together enormous amounts of customer journey data, enriched with the marketing expertise native to a business. It is not possible with neural networks, out of the box, to understand why or how the output was formulated. While Monte Carlo Simulation can help unlock some explanatory value in neural networks, the techniques showcased by Google DeepMind bring about a new branch of game theory that can alter the manner in which we approach the discipline of data science in response to business problems.
The full article is available to subscribers to the journal.
Author's Biography
Richard Churchman is a developer and data scientist. He is managing partner at Jube Capital Limited, where he is responsible for developing a proprietary predictive analytics platform that is used in a variety of industries. The platform is predominantly positioned in funds (banks, hedge funds, sovereign wealth funds, mutual funds, etc) to help manage investment portfolios using a blend of quantitative methods (typically regression and neural networks) and qualitative methods (expert judgement and, increasingly, augmented Bayesian networks). Richard has over 16 years’ experience working with predictive analytics across a variety of industries and has increasingly been called on to solve marketing problems such as digital value attribution and customer churn. Richard became a recognised expert in predictive analytics, particularly in the Middle East, regularly speaking at conferences such as the Middle East Forex and Managed Funds Expo. Richard lives between Dubai and Krakow.
Citation
Churchman, Richard (2016, June 1). Using neural networks and Monte Carlo techniques in data science: The value of Google DeepMind in general use. In the Applied Marketing Analytics: The Peer-Reviewed Journal, Volume 2, Issue 2. https://doi.org/10.69554/HYDY6722.Publications LLP