比利时vs摩洛哥足彩
,
university of california san diego
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mathematics colloquium
dr. pearson miller
flatiron institute, simons foundation
can a cell know its shape? unraveling the role of domain geometry in a non-local reaction-diffusion model
abstract:
reaction-diffusion equations with nonlocal constraints naturally arise as limiting cases of mathematical models of intracellular signaling. among the interesting behaviors of these models, much has been made of their 'geometry-sensing' properties: the strong sensitivity of steady-state solutions to domain geometry is widely seen as illustrative of how a cell establishes an internal coordinate axis. in this talk, i describe recent efforts to formally clarify this geometry dependence through careful study of the long-time behavior of a popular model of biochemical symmetry breaking. using the tools of formal asymptotics, calculus of variations, and a new fast solver for surface-bound pdes, we study the formation and motion of interfaces on a curved domain across three dynamical timescales. our results allow us to construct several analytical steady-state solutions that serve as counter-examples to received wisdom regarding the geometry-dependence of this class of model.
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apm 6402
apm 6402
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比利时vs摩洛哥足彩
,
university of california san diego
****************************
colloquium seminar
shuangning li
harvard
inference and decision-making amid social interactions
abstract:
from social media trends to family dynamics, social interactions shape our daily lives. in this talk, i will present tools i have developed for statistical inference and decision-making in light of these social interactions.
(1) inference: i will talk about estimation of causal effects in the presence of interference. in causal inference, the term “interference” refers to a situation where, due to interactions between units, the treatment assigned to one unit affects the observed outcomes of others. i will discuss large-sample asymptotics for treatment effect estimation under network interference where the interference graph is a random draw from a graphon. when targeting the direct effect, we show that popular estimators in our setting are considerably more accurate than existing results suggest. meanwhile, when targeting the indirect effect, we propose a consistent estimator in a setting where no other consistent estimators are currently available.
(2) decision-making: turning to reinforcement learning amid social interactions, i will focus on a problem inspired by a specific class of mobile health trials involving both target individuals and their care partners. these trials feature two types of interventions: those targeting individuals directly and those aimed at improving the relationship between the individual and their care partner. i will present an online reinforcement learning algorithm designed to personalize the delivery of these interventions. the algorithm's effectiveness is demonstrated through simulation studies conducted on a realistic test bed, which was constructed using data from a prior mobile health study. the proposed algorithm will be implemented in the adapts hct clinical trial, which seeks to improve medication adherence among adolescents undergoing allogeneic hematopoietic stem cell transplantation.
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apm 6402
apm 6402
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比利时vs摩洛哥足彩
,
university of california san diego
****************************
colloquium seminar
dr. lijun ding
university of wisconsin, madison
optimization for statistical learning with low dimensional structure: regularity and conditioning
abstract:
many statistical learning problems, where one aims to recover an underlying low-dimensional signal, are based on optimization, e.g., the linear programming approach for recovering a sparse vector. existing work often either overlooked the high computational cost in solving the optimization problem, or required case-specific algorithm and analysis -- especially for nonconvex problems. this talk addresses the above two issues from a unified perspective of conditioning. in particular, we show that once the sample size exceeds the intrinsic dimension of the signal, (1) a broad range of convex problems and a set of key nonsmooth nonconvex problems are well-conditioned, (2) well-conditioning, in turn, inspires new algorithm designs and ensures the efficiency of many off-the-shelf optimization methods.
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apm 6402
apm 6402
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