Webinar: Bridging the Gap: Statistical Rigor and the Promise of Data Science
Detalles
馃摙 Join us for DataPhilly鈥檚 first event of the new year鈥攁 virtual session exploring how statistical foundations and modern data science can (and must) work together to build trustworthy, high-value analytics and AI systems.
This 45-minute webinar will unpack the tension between statistical rigor and the fast-moving promise of data science, offering practical insights for practitioners, leaders, and anyone navigating today鈥檚 rapidly evolving data landscape. We鈥檒l wrap up with a 15-minute open discussion so you can ask questions and connect directly with the speaker.
Abstract
As data science increasingly takes center stage in applied estimation problems, a critical tension emerges: while data science offers powerful tools and better point estimates, it often does so by sacrificing the rigorous uncertainty quantification that traditional statistical methods provide. This talk explores how data science, particularly modern machine learning techniques like XGBoost, can augment鈥攔ather than replace鈥攕tatistical theory to improve estimation practices.
We will begin by acknowledging a key limitation of data science: its theoretical foundations remain underdeveloped compared to classical statistics. As a result, despite its empirical strengths, data science still relies on statistical theory to ensure principled inference, especially when dealing with uncertainty. Through examples from statistical consulting and simulation-based modeling, we will illustrate why understanding convergence and variability is essential for sound decision-making.
Importantly, we will also examine practical trade-offs. Data science often imposes fewer assumptions than traditional statistical models, allowing greater flexibility and performance. However, this comes at the cost of interpretability and reliable confidence intervals鈥攁n issue particularly concerning in high-stakes fields like medicine, where uncertainty matters deeply. Ultimately, this talk advocates for a hybrid approach: using statistical theory as a foundation, and data science as a powerful augmentation. While not all traditional statistical tools remain essential, many do鈥攁nd knowing when and how to combine them with modern techniques is the path forward.
Speaker Bio:
Raymond A. McCollum, Ph.D., is a data scientist and statistician with over 25 years of experience spanning defense, aerospace, and financial industries. His work includes applying statistics and data science to anti-submarine warfare for the U.S. Navy, conducting uncertainty analysis in heat shield measurements for NASA鈥檚 Mars Lander, and developing automated underwriting systems for Prudential Financial. Over his career鈥攆rom entry-level analyst to Vice President of Data Science鈥攈e has been recognized for innovative problem-solving and creative analytic design. He discovered that the mathematics underlying data analysis remains consistent across disciplines, forming the foundation for both classical statistics and modern data science. As Founder and CEO of Statistical Data Science Solutions (StatDSS), he focuses on advancing statistical rigor in real-world data science applications.
馃敆 Webinar access:
https://meet.google.com/fdk-acnk-goz
Reserve your spot, settle in wherever you are, and kick off the year with thoughtful conversation and learning!
Resumen de IA
Por Meetup
Online webinar for practitioners and leaders on integrating statistical foundations with data science to improve uncertainty quantification in analytics.
Resumen de IA
Por Meetup
Online webinar for practitioners and leaders on integrating statistical foundations with data science to improve uncertainty quantification in analytics.
