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Grouping similar things together - either users with similar habits, or products in an online shop. Seeing is believing - Dr Mike Pound helps us understand how to turn our datapoints into Powerpoints. Real life doesn't fit into neat categories - Dr Mike Pound on some different ways to regress your

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  • Real life doesn't fit into neat categories - Dr Mike Pound on some different ways to regress your
  • Seeing is believing - Dr Mike Pound helps us understand how to turn our datapoints into Powerpoints.
  • Grouping similar things together - either users with similar habits, or products in an online shop.

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