The goal of worthy AI and data science endeavors is to discover new true things. Every stage of an analytics challenge is susceptible to error and misdirection, seeping in to weaken or destroy useful results.
It takes expertise and discipline—responsible AI (RAI) practices—to guard against these hazards. RAI best practices ensure that analytic decision systems are designed expertly and ethically for greater effectiveness, reliability, and acceptance. Elder Research has survived and thrived its ~30 years by figuring out RAI and delivering high-value projects driven by it.
Everyone at Elder Research, whether technical or not, completes a short course based on our RAI framework, as we collaborate to deliver world-class results. The course doesn’t teach anyone how to do all the essential RAI tasks; that takes many years to master. Instead, for each stage of an analytics project, it thoroughly summarizes the major error entry points that one must defend against.
One such key hazard is outlier data points, which often harm model building; they can reverse, obscure, or even be the important result. I’ll illustrate each of those outcomes through real-world examples: