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Details

We look forward to seeing you at our next R meetup, on 14th of August.
Arrive from 5:45 pm for a 6 pm talk.

Synopsis:

Predicting client churn is widely acknowledged as a cost-effective way of realising customer life-time. It is claimed that it costs three times more to acquire a new customer than to retain existing ones. The talk will dwell on development of a binary client churn prediction model as a postgraduate research thesis and as applied to a medium-sized service company.

The talk will include:

  • Literature review of models used in home care service industry
  • Regression, Random Forest and C5.0 decision trees in R as candidate models
  • Model comparison and selection in R
  • Feature selection techniques and other R packages used

Speaker Bio:

Raul Manongdo – concluded last year his Masters in Analytics by Research at UTS with thesis on applied client churn prediction modelling. Whilst completing his thesis, he worked as a data analyst/research intern for UTS Advance Analytics Institute for its industry engagements and subsequently as a data scientist. He is coming from an extensive database developer/modeller practitioner experience and currently developing BI systems.

His thesis on applied client churn prediction modelling is published at https://opus.lib.uts.edu.au/handle/10453/123179.

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