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Data mining in Excel 2007 - Ella Maschiach's BI Blog

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Data mining in Excel 2007

Mr. Donald Farmer gave a lecture yesterday, May 31st 2010, at the Israeli BI User Group. This is what I summed up from the session.

Predictive Analytics
A good predictive analytics project would have:
Actionable - you get useful information from it
Innovative - gives something new, new insight from the model
Trustworthy - the model makes sense
Seamless - part of your everyday operations, so that it will get used more easily by the users

"All models are wrong, but some are useful" George Box
No model is perfect, you can't predict everything, but even then the model is useful. Don't expect to build a perfect model, just try to build a useful model.

How do you build a useful model?
Right problem
Right criteria - a realistic criteria for the business, small improvements over time, working gradually
Right data
Right results - results that meet your criteria
Right Delivery - giving people a model that users can understand

 

Traditional BI

Predictive Analytics

Exploration

Discovery

Drill down

Classification

Trending

Perdiction

Force constraints

Discover outliners

Apply rules and models   

Find Patterns and relationships

 

Right problem
Cross-sell and up-sell (selling something additional or selling them something similar but more expensive market basket analysis)
Customer acquisition (getting new customers, the demographics of your current customers)
Customer retention (keeping your customer with you, pattern of leaving)

 

Scenario

Tasks

Cross-sell and up-sell   

Association

Customer acquisition   

Clustering

Customer retention   

Classification, estimation

 

Data Mining Add in for Excel 2007

Analyze - the tab for beginning Data Mining
Turn the data into a table and then you can use the Analyze tab

Market basket analysis - what can I sell with the current product. Use profit per product to analyze for better profit.
Analyze key influencers - understanding what are the main drivers of a action (what makes people buy).
Detect categories - finding groupings within the groupings (no use to include ID). We can also define how many categories we'd like to get.
Fill from example - filling in missing data about your customer according to other carasteristic that we have about them.
Highlight exception - findings exceptions, how far away from the center is the data for that customer.

Comments

גרי רשף said:

לצערי נבצר ממני..

# June 1, 2010 8:58 PM

Data mining in Excel 2007 – Ella Maschiach's BI Blog | excel said:

Pingback from  Data mining in Excel 2007 – Ella Maschiach's BI Blog | excel

# June 2, 2010 2:33 AM
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