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Vyacheslav Lyubchich

Researcher at University of Maryland Center for Environmental Science

Publications -  51
Citations -  502

Vyacheslav Lyubchich is an academic researcher from University of Maryland Center for Environmental Science. The author has contributed to research in topics: Nonparametric statistics & Climate change. The author has an hindex of 10, co-authored 46 publications receiving 287 citations. Previous affiliations of Vyacheslav Lyubchich include Chesapeake Energy & University of Waterloo.

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PaCTS 1.0: a crowdsourced reporting standard for paleoclimate data

Deborah Khider, +92 more
TL;DR: The Paleoclimate Community reporTing Standard (PaCTS), a crowdsourced reporting standard for such data, is described, with the goal of maximizing the reuse value of paleoclimate datasets, particularly for synthesis work and comparison to climate model simulations.
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Patterns and Trends in Secchi Disk Depth over Three Decades in the Chesapeake Bay Estuarine Complex

TL;DR: In this paper, the authors conducted a comprehensive statistical analysis of spatial and temporal variations in Secchi disk depth and the key internal and external variables that influence its variability in Chesapeake Bay and its tidal tributaries over the past 30 years.
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On detecting non‐monotonic trends in environmental time series: a fusion of local regression and bootstrap

TL;DR: In this paper, a nonparametric trend test is proposed to detect smooth (non)monotonic trends embedded into a linear noise that possibly does not degenerate to a finite-dimensional representation or into a conditionally heteroscedastic (ARCH/GARCH) noise.
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Complementing the power of deep learning with statistical model fusion: Probabilistic forecasting of influenza in Dallas County, Texas, USA.

TL;DR: A probabilistic forecasting of influenza in Dallas County is developed by fusing all the considered models using Bayesian model averaging and assessing forecasting utility of Google search queries and meteorological data as exogenous predictors of influenza activity.