Classifications in R: Response Modeling/Credit Scoring/Credit Rating using Machine Learning Techniques – Data Science Central

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This is an attempt to showcase some worked out examples of Machine Learning (ML) use German Credit Data. Though we have selected credit scoring problem as a case study in this article, the same process will be applicable for wide range of classification or regression problems "Response modeling", "Risk Management", "Attrition/Churn management", "Cross-Sell/Up-Sell", "usage Patterns", "Net Present Value", "Life Time Value", "Predictive Maintenance and condition based monitoring", "Warranty", "Reliability", "Failure Prediction", "Image/Video Processing", "Crime", "Medical Experiments", "Hidden pattern recognition" . The basic difference of traditional modeling and machine learning is that "in traditional modeling we intend to set up a modeling framework and try to establish relationships while in machine learning we allow the model to learn from the data by understanding the hidden patterns". Hence the first one requires analyst to have solid understanding of statistical techniques and business knowledge while the later one is more complex in nature and computational intensive, hence requires higher computation power of the systems and analyst needs to be tech savvy. Kindly note that while traditional techniques perform well on small to large amount of data, machine learning will certainly learn better on high-dimensional and complex data such as Big Data set up.

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