Azure Machine Learning Workbench Tutorial - Market Campaign Prediction with Sentiment Analysis
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The detailed documentation for this market campaign prediction example includes the step-by-step walk-through:
Following is the link to the public GitHub repository where all the codes are hosted:
https://github.com/Azure/MachineLearningSamples-MarketCampaign
In business, companies are commonly recruiting new customers through market campaign. As a result, marketing executives often find themselves trying to predict the likelihood of customer purchase and finding the necessary actions to maximize the purchase rate.
The aim of this solution is to demonstrate predictive market analytics using AML Workbench. This solution provides an easy to use template to develop market campaign predictive data pipelines for retailers. The template can be used with different datasets and different definitions of success of market campaign. The aim of this tutorial is to:
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