During Aon’s Analytics Insights Conference, we focused on the variety of analytics software and solutions touching our industry. The conference was themed: "blending old and new: data and analytics in the modern era." It will come as no surprise that terms such as blockchain, AI and machine learning might appear to be the holy grail of our industry. But there are other keys to making good data-driven decisions.
Blackjack happens to be the perfect Petri dish to remind ourselves about making better decisions. Data is easy to get, and systems never change. At this year’s conference, Jeffrey Ma, former VP of analytics and data science at Twitter and kingpin of the famous MIT blackjack team, shared his thoughts on the future of some of the new capabilities in analytics, arguing that “the biggest misconception is that AI is like magic and solves everything. In reality, it’s only going to be as good as the problems you point out and the data set that’s available to you.”
Tracy Hatlestad, chief operating officer - analytics within Aon’s reinsurance solutions business, sat down with Jeffrey to find out more.
Q: In an industry like insurance where success with data and analytics is a clear differentiator, what are a few key things you think people need to remember about making data-driven decisions?
A: Quite a few things come to mind, but here are some that seem pertinent to the crowd today. The first is omission bias, or the idea of favoring inaction over action. In blackjack, there’s static math that helps override these biases that is harder to discern in insurance, but the logic still applies. The second is the fallacy of the gut result, or the idea that you can be a better predictor than science or math. The third, and potentially the most dangerous for the financial industry, is the idea of right decision vs. right outcome. In blackjack, an incorrect decision can still lead to one-off wins, and, in those scenarios, undue credence can be given to those decisions or decision makers in the future.
See also: 3-Step Approach to Big Data Analytics
Q: You talked about three levels of analytics – data, analysis and implementation. What are a few keys to success with those levels?
With level one
A: It’s imperative to remember that data is the building block for any analytical framework and any advantage that you can create. The adage, "garbage in, garbage out," still applies. In many industries, there are a number of barriers that stand in the way of quality data, such as:
- Data curation problems, often driven by legacy systems
- Lack of commitment to data quality
- Input by non-analytics professionals
- The gathering of data well in advance of the ability to use it for strategic advantage