PAW: SAS and the art and science of better

4 Min Read

Live from Predictive Analytics World

Anne Milley from SAS, one of the sponsors of the show, spoke on the art and science of better. Data is often messy and the enterprise is not a lab. Nevertheless, she says, we can still bring science to bear. We can observe, define, measure, experiment, learn and ACT. Anne had a number of observations:

  • We must begin with observation. Semmelweis’ study on hand washing in 1847 observed that hand washing saved lives but without the understanding of these observations nothing could be done.
  • Defining the right problem is essential. For instance, in CRM the results are very different if time is considered (e.g. with survival methods) than if it is not.
  • While there is a cost of running experiments to see what you can learn, there is a cost of ignorance too. Collecting more data through experiments may cost money but not knowing can be much more expensive.
  • Creating a culture of experimentation and continuous learning is both essential and difficult…  


Live from Predictive Analytics World

Anne Milley from SAS, one of the sponsors of the show, spoke on the art and science of better. Data is often messy and the enterprise is not a lab. Nevertheless, she says, we can still bring science to bear. We can observe, define, measure, experiment, learn and ACT. Anne had a number of observations:

  • We must begin with observation. Semmelweis’ study on hand washing in 1847 observed that hand washing saved lives but without the understanding of these observations nothing could be done.
  • Defining the right problem is essential. For instance, in CRM the results are very different if time is considered (e.g. with survival methods) than if it is not.
  • While there is a cost of running experiments to see what you can learn, there is a cost of ignorance too. Collecting more data through experiments may cost money but not knowing can be much more expensive.
  • Creating a culture of experimentation and continuous learning is both essential and difficult.
  • There is an essential step of acting on the modelling or analysis. As Deming said “The object of taking data is to provide a basis for action“. This often requires more interpretation and discussion than might be expected and tools like visualization can really help explain what a model is saying, thus increasing the likelihood of action.
  • Challenging business as usual is a great way to use analytics and this can be supported by developing an Analytic Center of Excellence (though I would say a Decision Center of Excellence would be better) to see what is being done best across the company, close the loop and drive new behavior elsewhere.

Anne ended by pointing out just how important the social dimension can be for actually putting analytics to work and be more impactful.

More posts and a white paper on predictive analytics and decision management at decisionmanagementsolutions.com/paw

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