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1 her to arrive at an ultimately more accurate forecast.
2 and a Richards model in the context of early forecast.
3 ways that have been previously difficult to forecast.
4 udies by using water demand and water supply forecast.
5 beliefs as opposed to anchoring on the model forecast.
6 erical models provides increased accuracy to forecasts.
7 earning" model), was trained to produce risk forecasts.
8 travel can improve the quality of influenza forecasts.
9 tion effort that complements existing public forecasts.
10 of how this diversity modifies agricultural forecasts.
11 rates as a key area for research to improve forecasts.
12 trust and under-utilize such models in their forecasts.
13 ocesses may hinder long-term epidemiological forecasts.
14 tion, crustal stress evolution, and eruption forecasts.
15 of evolution, regulation, and computational forecasting.
16 , planning healthcare capacity, and epidemic forecasting.
17 hquakes is required for effective earthquake forecasting.
18 on dynamics models - what we call structural forecasting.
19 arking; and data assimilation and ecological forecasting.
20 have not yet been used for seasonal hypoxia forecasting.
21 in tissue and may also be useful for seizure forecasting.
23 lence of diabetes mellitus and heart failure forecast a growing burden of disease and underscore the
26 nternet data has shown promise for improving forecast accuracy and timeliness in controlled settings,
28 e of human intervention is likely to improve forecast accuracy in the medium-term in parallel with th
29 1) ), were evaluated for their usability for forecasting adult heat tolerance, measured as the vegeta
30 thogen, and how monitoring and computational forecasting affect protocols and efficiency of control.
32 s well as whether group brain activity could forecast aggregate video view frequency and duration out
36 an observable and identifiable precursor to forecast an impending earthquake within a period of less
38 laws to reduce data dependence in ecological forecasting and accurately predict extreme events beyond
39 e, we detail three regional-scale models for forecasting and assessing the course of the pandemic.
41 high VPD on plant function, improvements in forecasting and long-term projections of climate impacts
42 improving the predictive ability of seasonal forecasting and modelling of long-range spatial connecti
43 hallenging issue of AMD and, more generally, forecasting and optimization of mineral leaching in indu
44 arly vaccinated populations and thus improve forecasting and vaccination strategies to combat seasona
45 s essential for developing reliable outbreak forecasts and informing stakeholders on mitigation and p
47 l community should be hesitant in developing forecasts and prevention strategies for COVID-19 in the
49 new prescription launches a vision of surer forecasts and stands versatile enough to be applicable t
50 an exposure to cyanotoxins is challenging to forecast, and perhaps the least understood exposure rout
51 es and improving the processes of diagnosis, forecasting, and tracking of normal and pathological agi
53 dynamic boundary shape suggests that current forecasting approaches assuming a constant shape could b
56 st of sepsis care for Medicare beneficiaries forecast arise approximately 13% over 2 years owing the
57 arameters for solar desiccant driven AWC and forecast atmospheric water harvesting potential (L/m(2)/
58 ith Recurrent Neural Networks in the task of forecasting bees' level of activity taking into account
63 80s; analyses based on global climate models forecast bleaching will become an annual event for most
65 in only a subset of these regions, however, forecasted both aggregate view frequency and duration (i
67 o reduce the local biases of the NSCS marine forecasting by as much as 28-31% (19-36%) in 24 h to 120
69 ametric statistical approach based on analog forecasting, called kernel analog forecasting (KAF), whi
71 We find that accurate and well-calibrated forecasts can be generated for countries in temperate re
72 of tailored deterministic and probabilistic forecasts can inform key prevention and control strategi
75 ur participation in a weekly prospective ILI forecasting challenge for the United States for the 2016
77 rces, atmospheric and oceanic transport, and forecasting climate change impacts through modeling.
80 n western Micronesia. Our novel approach for forecasting coral growth into the future may be applicab
82 trate that similar approaches can be used to forecast CRISPR/Cas9 gene editing outcomes in Xenopus tr
84 study shows that seizure probability can be forecasted days in advance by leveraging multidien IEA c
86 administrative and policy decision makers to forecast demand for hospital resources, to understand ho
93 future peatland development is important to forecast feedbacks on the global C cycle and help inform
94 el is able to provide an accurate short-term forecast for the numbers and age distribution of cases a
97 as much as 28-31% (19-36%) in 24 h to 120 h forecasts for temperature (salinity) from sea surface to
98 ien IEA cycles alone generated daily seizure forecasts for the next calendar day with IoC in 15 (83%)
101 y was to develop a machine learning model to forecast future circumpapillary retinal nerve fiber laye
103 our ability to assess transmission dynamics, forecast future incidence, and estimate the impact of co
113 gradients on population differentiation and forecasted how this genetic legacy may limit the persist
114 effects of threatening human processes, and forecasting how threatened species might be distributed
116 across all scales and trophic levels, and to forecast impact thresholds beyond which irreversible cha
118 ws, and use this model to generate influenza forecasts in conjunction with incidence data from the Wo
121 we observed state-of-the-art performances in forecasting individual CKD onsets with different machine
126 water contribution is modeled to explain and forecast its effect as a function of its concentration i
128 on analog forecasting, called kernel analog forecasting (KAF), which avoids assumptions on the under
130 arid ecosystems, yet it remains difficult to forecast large-scale vegetation shifts (i.e. biome shift
131 nd diverging methodologies of estimation and forecasting, leading to important differences in global
134 Our results have important implications for forecasting mangrove carbon dynamics and the persistence
136 pH variations a year in advance over a naive forecasting method, with the potential for skillful pred
138 r, we show that cLV is as accurate as gLV in forecasting microbial trajectories in terms of relative
140 ty experiments with the Weather Research and Forecasting model coupled with Chemistry (WRF-Chem) and
141 hemical transport model-Weather Research and Forecasting model coupled with Chemistry version 3.5 (WR
149 access should be incorporated into COVID-19 forecasting models when applied to low-income countries.
150 n this study, we developed novel methods for forecasting mortality, fertility, migration, and populat
154 he spread of COVID-19 allows a more accurate forecast of disease spread when NPIs are partially loose
158 time data are valuable in the monitoring and forecasting of epidemics and outbreaks, it is evident th
160 by age and sex to improve real-time targeted forecasting of hospitalization and critical care needs.
161 is study proposes a method for probabilistic forecasting of the disease incidences in extended range
162 our approach could lead to more informative forecasting of the seismic activity in seismogenic areas
164 can provide accurate, noninvasive, and early forecasting of ultimate outcomes for NSCLC patients rece
165 e where system nonlinearities limit accurate forecasting of unprecedented events due to poor extrapol
166 ive tool for spatially explicit tracking and forecasting of wildlife population dynamics at scales th
167 s, the ability to generate useful short-term forecasts of Adelie penguin breeding abundance will be e
170 emiology and cyber-security require accurate forecasts of dynamic phenomena, which are often only par
172 e drivers of false spring risk, complicating forecasts of future false springs, and potentially resha
175 In terrestrial ecosystems, climate change forecasts of increased frequencies and magnitudes of wet
176 patient's cEEG data (both cohorts) generated forecasts of seizure probability that were tested on sub
179 on forces in the pai-dimers lead to improved forecasts of sigma- vs pai-dimerization mode, and sugges
180 om general human movement models can improve forecasts of spatio-temporal transmission patterns in pl
185 surface data are needed to provide realistic forecasts of the fate of such organisms under anthropoge
186 warning signals should provide more accurate forecasts of the future state of biological systems.
187 seasonal, spatially explicit, time-evolving forecasts of the hypoxic zone that combines statistical
192 flow model, this article provides the first forecasts of water levels in the study area up to the ye
196 rts have shown improvements by "hybridizing" forecasts-pairing human forecasters with machine models.
200 ore educational inequality since 1970 and to forecast progress towards the education-related 2030 SDG
203 esearch has utilized clinical information to forecast readmissions, analyzing digital footprints from
204 data can overestimate predictive skill when forecasting recruitment is part of the assessment proces
205 o explore novel approaches to monitoring and forecasting regional outbreaks as they happen or even be
208 nd found that data from preinfusion products forecasted response in CLL successfully in discovery and
209 licy contributions on mobility reduction, we forecast scenarios for relaxing various types of NPIs.
213 nd sleep quality (efficiency) provide future forecasting sensitivity to the rate of Abeta accumulatio
215 transmission empirically, our model improves forecast skill over recent, state-of-the-art models for
216 ion owing to their simplicity and comparable forecast skill to first-principles models at short lead
218 nowledge about migration potential is key to forecasting species distributions in changing environmen
219 ints to potential fundamental limitations in forecasting species shifting ranges without considering
220 etic variation is commonly ignored in models forecasting species vulnerability and biogeographical sh
226 then compared to the East Asian Seas Nowcast/Forecast System, and it was found that daily temperature
229 We present a next-generation monitoring and forecasting system for [Formula: see text]-borne disease
230 S national and regional levels, the proposed forecasting system generates improved predictions of bot
231 search trends based 'nowcasts' in influenza forecast systems, and encourage reevaluation of the util
233 nd attack rates, most existing process-based forecasting systems treat ILI as a single infectious age
236 brain uses a hippocampal prospective code to forecast temporally structured learned associations.
237 function network (AR-RBFN) provides a better forecast than that obtained using other model-free appro
238 in each Australian state since mid-March and forecast that clinical demand would remain below capacit
241 roposed as a surrogate indicator to mine and forecast the average housing prices in the inland capita
242 at filter masks and dispersal simulations to forecast the distribution of 349 species of forest- and
243 anates from epidemic epicentres) not only to forecast the distribution of confirmed cases, but also t
246 At failure onset, it may be difficult to forecast the final eruption volume; pressure in a magma
247 c responses need disentangling to accurately forecast the impacts of climate change on animal populat
248 rt of a set of biomarkers that statistically forecast the longitudinal trajectory of cortical Abeta d
249 nstrumental record can better understand and forecast the mechanisms regulating forest sensitivity to
250 tate-of-the-art machine learning methods can forecast the occurrence of a global gap or learn effecti
253 Moreover, our findings offer a framework to forecast the spread and evolvability of MGE-encoded gene
255 iming of their adoption, opening the way for forecasting the effectiveness of future interventions.
263 coral morphological traits may contribute to forecasting the structure of reef fish communities on no
264 tive interactions are rarely considered when forecasting the success or speed of expansion, in part b
265 for accelerated research to improve seasonal forecasts through multidecadal climate projections.
266 f video viewing (but not initial choice) can forecast time allocation out of sample in an internet at
267 the ensemble-mean North Atlantic Oscillation forecast to match the observed variance of the predictab
272 e replacement level (TFR <2.1), and 183 were forecasted to have a TFR lower than replacement by 2100.
274 , including Japan, Thailand, and Spain, were forecasted to have population declines greater than 50%
275 ce stays consistent with observed trends are forecasted to increase 756% by midcentury; this is an or
277 5 but in the reference scenario, the USA was forecasted to once again become the largest economy in 2
279 a incidence in 2008-2017, then used Bayesian forecasting to examine an extensive range of scenarios.
283 e model is parameterized with these data, we forecast treatment response with and without HER2-target
284 ling is used to understand disease dynamics, forecast trends, and inform public health prioritization
286 y will occur is limited because biodiversity forecasts typically focus on individual snapshots of the
288 ped a human exposure likelihood model (7-day forecast) using general aerosol characteristics and meas
289 earson's correlation coefficient between the forecasted value and the measured thickness was rho = 0.
291 element method, is combined with time-series forecasting via auto regressive integrated moving averag
293 568 km transect of field shrub sampling, and forecasted warming scenarios with regional downscaling t
296 f the hypoxic zone that combines statistical forecasting with information from a 3D biogeochemical mo
298 suite of retrospective, initialized ensemble forecasts with an Earth system model (ESM) to predict th