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DTSTART:19960101T000000 END:STANDARD BEGIN:STANDARD TZNAME:GMT TZOFFSETFROM:+0100 TZOFFSETTO:+0000 DTSTART:19961027T020000 RRULE:FREQ=YEARLY;BYMONTH=10;BYDAY=-1SU END:STANDARD END:VTIMEZONE BEGIN:VEVENT DTSTAMP:20260608T100004Z DTSTART;VALUE=DATE-TIME:20260608T130000 DTEND;VALUE=DATE-TIME:20260608T140000 SUMMARY:WCPM\, Kevin Huang\, Warwick TZID:Europe/London UID:20260608-8ac672c59d8bfea7019daa1cd0024e12@warwick.ac.uk CREATED:20260521T094626Z DESCRIPTION:Networking Lunch: Outside L5\, from 12:30pm - 1pm. Title: Dia gonal Symmetrization of Neural Network Solvers for the Many-Electron Sch rödinger Equation Abstract: Incorporating group symmetries into neural n etworks has been a cornerstone of success in many AI-for-science applica tions. Diagonal groups of isometries\, which describe the invariance und er a simultaneous movement of multiple objects\, arise naturally in many -body quantum problems. Despite their importance\, diagonal groups have received relatively little attention\, as they lack a natural choice of invariant maps except in special cases. We study different ways of incor porating diagonal invariance in neural network ansätze trained via varia tional Monte Carlo methods\, and consider specifically data augmentation \, group averaging and canonicalization. We show that\, contrary to stan dard ML setups\, in-training symmetrization destabilizes training and ca n lead to worse performance. Our theoretical and numerical results indic ate that this unexpected behavior may arise from a unique computational- statistical tradeoff not found in standard ML analyses of symmetrization . Meanwhile\, we demonstrate that post hoc averaging is less sensitive t o such tradeoffs and emerges as a simple\, flexible and effective method for improving neural network solvers. Bio: Kevin is a postdoctoral rese arch fellow funded by the Engineering and Physical Sciences Research Cou ncil (EPSRC) through the ProbAI Hub. They are currently based at the Uni versity of Warwick\, working with Gareth Roberts\, and collaborate with Boris Hanin at Princeton University. They completed a PhD in machine lea rning at the Gatsby Computational Neuroscience Unit\, University College London\, under the supervision of Peter Orbanz and Morgane Austern. Dur ing this time\, they were also a visiting researcher with the LIPS group at Princeton Computer Science\, hosted by Ryan P. Adams. Prior to this\ , they completed both their undergraduate and master’s degrees in mathem atics at the University of Cambridge. Their research lies at the interse ction of machine learning theory\, probability\, and statistics. They st udy the emergence of universal structures in large-scale stochastic syst ems\, drawing on tools from random matrix theory\, high-dimensional stat istics\, symmetry-based inference\, and stochastic optimisation. Alongsi de this theoretical work\, they increasingly engage with applied challen ges\, particularly around scaling laws in neural networks\, AI for scien tific discovery\, and the robustness and safety of machine learning mode ls. For the 2025–2026 academic year\, he is co-organising the ProbAI onl ine seminar series and will lead the ProbAI Theory of Scaling Laws Works hop at Warwick in summer 2026. LOCATION: CATEGORIES:WCPM LAST-MODIFIED:20260521T094626Z ORGANIZER;CN=Jin Kang: END:VEVENT END:VCALENDAR