Reflecting on the challenges and trade-offs of selecting analytical methodologies, the chapter emphasizes adaptability and the need to align data with real-world problems. Speakers share experiences from various roles, highlighting the importance of continuous learning and openness to new perspectives in the evolving landscape of data analysis.
From running a controlled experiment to running a linear regression. From eyeballing a line chart to calculating the correlation of first differences. From performing a cluster analysis because that’s what the business partner asked for to gently probing for details on the underlying business question before agreeing to an approach. There are countless analytical methodologies available to the analyst, but which one is best for any given situation? Simon Jackson from Hypergrowth Data joined Moe, Julie, and Tim on the latest episode to try to get some clarity on the topic. We haven’t figured out which methodology to use to analyze whether we succeeded, so you’ll just have to listen and judge for yourself. For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.