Lessons From A Data Analysis Exercise

Bill Schmarzo has an interesting post summarizing the results of an MBA class exercise involving data analysis:

Lesson #2:  Quick and dirty visualizations are critical in understanding what is happening in the data and establishing hypotheses to be tested. For example, the data visualization in Figure 1 quickly highlighted the importance of offensive rebounds and three-point shooting percentage in the Warriors’ overtime losses.

Read the whole thing.

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