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1  conclusion, resistive loading changed total variational activity according to the size of the load:
2      When partitioned, the increase in total variational activity during isocapnic hypoxia was found
3    We speculate that the observed changes in variational activity may reflect an attempt by the contr
4 ce periodic breathing and increase the total variational activity of breath components.
5 effect of hyperoxic hypercapnia (CO2) on the variational activity of breathing in 14 volunteers befor
6  To examine the effect of elastic loading on variational activity of breathing, we studied 11 healthy
7 o examine the effect of resistive loading on variational activity of breathing, we studied 18 healthy
8 ive load of 3 cm H2O/L/s decreased the total variational activity of expiratory time (TE) and minute
9 s a load of 6 cm H2O/L/s increased the total variational activity of inspiratory time (TI).
10 /s, the load of 6 cm H2O/L/s increased total variational activity of tidal volume (VT), TI, TE, and V
11 f 18 cm H2O/L decreased only the fraction of variational activity of VT and TE due to uncorrelated, r
12 H2O/L/s increased the correlated fraction of variational activity of VT.
13                    Partitioning of the total variational activity revealed that these alterations wer
14 emory," and the correlated fraction of total variational activity- increased with loading.
15 component by altering the random fraction of variational activity; it had no significant effect on th
16 ugh a hierarchical Bayesian framework, and a variational algorithm for inference.
17 ational ANeuploidy analysis (SCEVAN), a fast variational algorithm for the deconvolution of the clona
18      Here we present an arbitrarily accurate variational algorithm that, instead of fixing an ansatz
19          Utilizing deletion, mutation and co-variational analyses, we have identified three regions i
20  briefly introduce epi-convergence theory of variational analysis and transform the physical mapping
21                                              Variational analysis of equilibrium and stability is sho
22 , organismic and hierarchical selection, and variational and essentialist thinking.
23 nergies-similar to recent calculations using variational and Monte Carlo methods.
24 interaction energy have been demonstrated by variational and perturbation based energy decomposition
25 mine the theory behind the currently popular variational and perturbation based methods from the poin
26                                              Variational and tunneling effects are treated by canonic
27 cular, we try to link information theoretic (variational) and thermodynamic (Helmholtz) free-energy f
28                   Here we report Single CEll Variational ANeuploidy analysis (SCEVAN), a fast variati
29 uliNet outperforms previous state-of-the-art variational ansatzes for atoms, diatomic molecules and a
30            In this work, we develop a simple variational approach allowing one to find the best possi
31                     The method is based on a variational approach and consists of using air concentra
32 lve the inference problem using an efficient variational approach and demonstrate our method on simul
33              A second method is based on the variational approach and involves a global minimization
34         By implementing a recently developed variational approach based on the exact fractionalized e
35 Here, we develop an analytical and numerical variational approach that combines continuum mechanics a
36             The recently developed energetic variational approach to dissipative systems allows mathe
37                 We integrate 3D matching and variational approach to handle a diverse range of motion
38 ed rings (e.g., polygons) based on an energy variational approach.
39 an are the Feynman diagram technique and his variational approach.
40                                       We use variational approaches and numerical simulations to addr
41                              Alternatives to variational approaches are needed for large-scale experi
42 m and software program, hFRET, that uses the variational approximation for Bayesian inference to esti
43                                            A variational approximation is used for efficient paramete
44 n exact inference algorithm and an efficient variational approximation that allows scalable inference
45        In addition, we identify a particular variational approximation to be best-one in which the po
46 abilistic PCA (ZIPPCA) model, mbDenoise uses variational approximation to learn the latent structure
47 he scale of the datasets, we develop several variational approximations and explore their accuracy.
48                             In this article, variational approximations are used to perform the analo
49         It is shown with the aid of H+/- and variational arguments that, in fact, there is a much ric
50                                A generalized variational auto-encoder (VAE) was trained to learn a lo
51 tigate how latent space models trained using variational auto-encoders can infer these properties fro
52 e that the latent space models learned using variational auto-encoders provide a mechanism for explor
53 ere, we introduce SpatialMETA, a conditional variational autoencoder (CVAE)-based framework for cross
54 oregressive model, called Temporal Dirichlet Variational Autoencoder (TDVAE), which exploits the math
55 ng independent latent spaces within a single variational autoencoder (VAE) encompassing at least four
56                                            A variational autoencoder (VAE) is a machine learning algo
57  paper we take a different approach, fitting variational autoencoder (VAE) models parameterized by de
58 total of 412,461 ECGs were used to develop a variational autoencoder (VAE) that reconstructed precord
59                  To this end, we developed a variational autoencoder (VAE) to learn a continuous nume
60              Here, by contrast, we apply the variational autoencoder (VAE), an unsupervised learning
61 imensionality reduction technique, including variational autoencoder (VAE), is a potential solution t
62         We applied a deep-learning approach, variational autoencoder (VAE), to analyze the fluctuatio
63                   Here we present XOmiVAE, a variational autoencoder (VAE)-based interpretable deep l
64 o approaches: a semisupervised model using a variational autoencoder and a pretrained supervised lear
65 ed scVital, a computational tool that uses a variational autoencoder and discriminator to embed scRNA
66 ural networks (CNNs), but neither CNNs nor a variational autoencoder captured the human geometric reg
67     Here we present biVI, which combines the variational autoencoder framework of scVI with biophysic
68 tion of a recently published highly scalable variational autoencoder framework that provides interpre
69 egrates the factorization principle into the variational autoencoder framework, ensuring the preserva
70                    Deep-learning models like Variational AutoEncoder have enabled low dimensional cel
71 l on a square lattice is investigated with a variational autoencoder in the non-vanishing field case
72                  Here we describe 'Dhaka', a variational autoencoder method which transforms single c
73              Here, SeATAC uses a conditional variational autoencoder model to learn the latent repres
74  including the long-short term memory model, variational autoencoder model, and generative adversaria
75      By contrast, we propose a probabilistic variational autoencoder model, scVAEIT, to integrate and
76 aterial dynamics, we construct Convolutional Variational Autoencoder models to track structural phase
77 dual dimensions in denoising autoencoder and variational autoencoder models trained using an intermed
78 coder model, exmiR or mRNA-based models, and variational autoencoder models.
79  scPDA, a probabilistic model that employs a variational autoencoder to achieve high computational ef
80 s are encoded and decoded collectively via a variational autoencoder to infer candidates for approved
81              CLARM consists of a Conditional Variational Autoencoder transforming six-dimensional pha
82                                   A residual variational autoencoder was developed to extract physiol
83 A (Dimensionality Reduction with Adversarial variational autoencoder), a data-driven approach to fulf
84                               First, using a variational autoencoder, it generates complex latent rep
85 learning framework based on Vector Quantized Variational AutoEncoder, tailored for comprehensive CRE
86 ised generative neural methods, based on the variational autoencoder, that can model cell differentia
87 n optional data augmentation procedure via a variational autoencoder, which improves the method's rob
88                                            A variational autoencoder-based approach, neural relationa
89           DR-A leverages a novel adversarial variational autoencoder-based framework, a variant of ge
90                                 CLigOpt is a variational autoencoder-based model which utilizes co-em
91                     Here we propose CODAL, a variational autoencoder-based statistical model which us
92 s, and laboratory methods with a conditional variational autoencoder.
93 l datasets into a unified latent space using Variational Autoencoders (VAE) in a unique training meth
94 , a method using Nearest Neighbours (NN) and Variational Autoencoders (VAE), which we apply to k-mers
95               Deep generative models such as variational autoencoders (VAEs) and generative adversari
96                Deep learning models, such as variational autoencoders (VAEs), can enhance clustering
97 ative filtering, denoising autoencoders, and variational autoencoders can impute missing values in th
98          Deep learning architectures such as variational autoencoders have revolutionized the analysi
99 rative analysis-by-synthesis model (based on variational autoencoders) for MNIST and a hybrid discrim
100 sociative network) trains generative models (variational autoencoders) to (re)create sensory experien
101 etworks, Deep Neural Networks, Autoencoders, Variational Autoencoders, and Gated Recurrent Units.
102 eneration, each using genetic algorithms and variational autoencoders.
103                 VEGAWES is an extension to a variational based segmentation algorithm, VEGA: Variatio
104 methods such as Markov chain Monte Carlo and Variational Bayes (VB) are typically used.
105                        Enricherator uses the variational Bayes algorithm to fit a generalized linear
106                                 We develop a variational Bayes approach (GEMINI) that jointly analyze
107 thin a Bayesian hierarchical framework and a variational Bayes approximation is derived which allows
108 ergence of the algorithm beyond the standard Variational Bayes Expectation Maximization algorithm.
109 n Annotation Guided eQTL Analysis (BAGEA), a variational Bayes framework to model cis-eQTLs using dir
110 ning of factor models with the auto-encoding variational Bayes framework, is not domain specific and
111 dicted by a sparse set of regulators using a variational Bayes method, and then building a bipartite
112                           We propose a novel variational Bayes network reconstruction algorithm to ex
113              Our method employs an efficient variational Bayes scheme for model inference enabling it
114 ker within the GWAS, based on results from a variational Bayes spike regression algorithm.
115 ed model and use a computationally efficient variational Bayesian algorithm to fit the model.
116                         A recently developed variational Bayesian analysis using pattern recognition
117                                            A variational Bayesian Expectation Maximization (EM) with
118 exploiting an approximation technique termed variational Bayesian expectation maximization.
119 n for model selection that is derived from a variational Bayesian framework with a popular alternativ
120                      Here we develop a novel Variational Bayesian Hidden Markov Model (VB-HMM) to inv
121                                          The variational Bayesian independent component analysis mixt
122                                     POP uses variational Bayesian independent component mixture model
123                             We derive a fast variational Bayesian inference algorithm and show that i
124 al efficiency is achieved through the use of variational Bayesian inference.
125       Using simulated data, we show that the variational Bayesian method is more accurate in finding
126 tumour microarray datasets and show that the variational Bayesian method is more sensitive to capturi
127 red with an unsupervised machine classifier, variational Bayesian mixture of factor analysis (vbMFA).
128 ers of an underlying state space model using variational Bayesian procedures.
129 ore, we highlight the challenges in studying variational bias and propose potential approaches to ide
130                    Here we use the invariant variational bicomplex formalism to derive the first equi
131 erefore obey a maximum-entropy path-integral variational calculus ("the principle of least exertion",
132 ms can be formulated within the framework of variational calculus, their solution for complex systems
133 he inherent difficulties of the conventional variational-calculus approach prevents the numerical cal
134                      One method, the quantum variational classifier, uses a variational quantum circu
135                                              Variational crystallization focuses on protein modificat
136 ns which show that a strategy, which we term variational crystallization, substantially enhances the
137 try, distribute material efficiently and for variational cutting of orthosis padding material.
138                     Here, a technique called variational data assimilation is introduced as a means o
139  crystallographic theory, implemented in the variational deep learning framework Careless.
140 roposal parameters informed by approximating variational densities via auxiliary parameters, is used
141                   We present theoretical and variational details of the formulation and verify our im
142                        We also show that the variational effect is important in computing the energy-
143 ants have been analyzed in detail, including variational effects, tunneling contributions, the effect
144         The design sensitivity for the mixed variational eigenvalue problem is derived using the adjo
145 ccomplished by a combination of a fast mixed variational eigenvalue solver and distributed Graphic Pr
146                               We developed a variational EM algorithm for a hierarchical Bayesian mod
147                      We demonstrate that our variational EM algorithm has comparable sensitivity and
148   Furthermore, we show that our model with a variational EM inference algorithm has higher specificit
149 iational based segmentation algorithm, VEGA: Variational estimator for genomic aberrations, which has
150 tor, indicating the presence/absence of each variational event compared to a "reference" sequence.
151 e propose a Bayesian statistical model and a variational expectation maximization (EM) algorithm to e
152                                The resulting variational expression, deltaVmax = GudeltaPel + Peldelt
153               Here, we consider a variant of variational filtering for static inputs, to which we ref
154 e selection of a reaction coordinate and the variational formulation of the reaction probability prob
155       This paper describes an L1 regularized variational framework for developing a spatially localiz
156 ropose a model called PRotein Engineering by Variational frEe eNergy approximaTion (PREVENT), which g
157                              Here, we used a variational free energy functional to calculate the char
158 brain hypothesis, predictive processing, and variational free energy minimisation are typically used
159 d molecular dynamics, umbrella sampling, and variational free energy profile methodologies.
160 s in effective synaptic connectivity reduced variational free energy, where the connection strengths
161 s to a single principle--the minimisation of variational free energy--to provide Bayes optimal soluti
162 per, we integrate these candidates using the variational (free energy) approach to human cognition an
163                                   Adopting a variational Gaussian approximation for the posterior of
164 ent framework for parameter estimation using variational Gaussian approximations (VGA).
165  pulse retrieval method based on conditional variational generative network (CVGN) that can address b
166                    Here, we introduce signed variational graph auto-encoder (S-VGAE), an improved gra
167 he-art graph embedding methods, hierarchical variational graph auto-encoder learns more informative a
168        First, we have developed hierarchical variational graph auto-encoders trained end-to-end to jo
169                                 We present a variational hybrid quantum-classical algorithm for findi
170 n that uses well-established techniques from variational imaginary time evolution.
171                                 We present a variational independent component analysis (ICA) method
172 e present Spatial Interaction Modeling using Variational Inference (SIMVI), an annotation-free deep l
173    Additionally, DEIsoM couples an efficient variational inference and a post-analysis method to impr
174  of the data using computationally efficient variational inference and supports flexible sparsity con
175                                   We apply a variational inference approach to the learning of Gaussi
176                    The MAP approximation and variational inference described in this paper have been
177                    Furthermore, using modern variational inference methods based on automatic differe
178  multilayered Dirichlet model for stochastic variational inference of pixel-level spatial factors, an
179                                       We use variational inference techniques to learn the model para
180 e an expectation-maximization algorithm with variational inference that maximizes the likelihood of t
181               Here, we introduce contrastive variational inference, a framework for deconvolving vari
182                        Here we present Total Variational Inference, a framework for end-to-end joint
183 these two components, coupled with efficient variational inference, enables the selection of networks
184 andard application in Bayesian networks, via variational inference, to their use in the literature on
185 nce algorithm for our model using stochastic variational inference.
186                                              Variational interaction energies (E(i)) of side chain-li
187 cation of this sort of model by illustrating variational inversion (using simulated data) of this mod
188  methods have been largely restricted to the Variational Laplace (VL) algorithm which assumes that th
189           The parameters are determined in a variational learning scheme aimed at minimizing an appro
190 nearity is to project the dynamics onto some variational manifold.
191 In particular, we characterize the models of variational, maxmin, constant absolute risk aversion, an
192                                    These are variational message passing and belief propagation - eac
193                                        While variational message passing offers a simple and neuronal
194 e expense of the architectural simplicity of variational message passing.
195                                          The variational method directly yields predicted chevron plo
196             Here, we use the maximum caliber variational method to build a minimal model of cell beha
197 trate that, unlike the other approximations, variational methods are accurate and are guaranteed to l
198                                          The variational methods are typically derived from the early
199                                    Energetic variational methods can deal with these characteristic p
200 for the S4 segment are combined using energy variational methods in which all densities and movements
201                                        Using variational methods, we demonstrate that feedbacks can i
202 ussler, loopy belief propagation and several variational methods.
203      Afterwards extracted features, based on variational mode decomposition (VMD), phase-rectified si
204   We proposed a residue-level coarse-grained variational model for the investigation of the aggregati
205     We analyze folding routes predicted by a variational model in terms of a generalized formalism of
206 ontrolling allosteric transitions by using a variational model inspired from work in protein folding.
207                             A coarse-grained variational model is used to investigate the polymer dyn
208 ng morphological traits and individuation of variational modules.
209                                            A variational multiscale approach is needed to deal with i
210 T(1rho) maps obtained by deep learning-based variational network (VN) and compressed sensing (CS).
211                            Here we implement variational optical flow analysis as a new approach to a
212 e replace the actual dynamic simulation with variational optimization of a reaction path connecting k
213 mathematical physics, which can be recast as variational optimization problems, such as the important
214 ments and then extend its application to the variational optimization(6-8) of Hamiltonians for quantu
215 e search and closed-loop optimization of the variational parameters, approximating the ground-state e
216                                      Using a variational path sampling algorithm, we simulated the en
217 dered eigenvectors of orthogonal hydrophobic variational patterns.
218 l atomic interactions into the semi-discrete variational Peierls framework.
219    Here, we develop a nonlocal semi-discrete variational Peierls-Nabarro (SVPN) model by incorporatin
220           Calculations within a semidiscrete variational Peierls-Nabarro model informed by first-prin
221 een computed using the second-order Kleinert variational perturbation theory (KP2) in the framework o
222 we include nuclear quantum effects through a variational polaron transformation of the high-frequency
223 ata through univariate approximations of the variational posterior probability of inclusion, with pro
224 ocumented human transmission biases on their variational preferences.
225   First, we take advantage of the underlying variational primal-dual structure that MFGs exhibit and
226                          By discretizing the variational principle in a natural way we obtain discret
227                 We introduce a discrete-time variational principle inspired by the quantum clock orig
228                                              Variational principle is utilized to derive the nonlinea
229 variational principles and the time-embedded variational principle presented.
230 tion State identification via Dispersion and vAriational principle Regularized neural networks (TS-DA
231  advantage of the unique perspective of this variational principle to examine the error of basis appr
232  variational states using the time-dependent variational principle, results in classical chaotic Hami
233 eved by adding an regularization term to the variational principle, which is shown to yield solutions
234 o called Minimum Entropy Generation; and the Variational Principle.
235 n this case the Riemann mapping has a linear variational principle: It is the minimizer of the Dirich
236                                        Using variational principles and simulations, we use active in
237 tion between previously known time-dependent variational principles and the time-embedded variational
238      In a recent paper, the authors explored variational principles that help one understand chemical
239                              We formulated a variational problem using the geodesic shortest path, wh
240 of then-available numerical solvers, the NRT variational problem was recently shown to be amenable to
241                                      Certain variational problems in this setting are considered, inc
242                          We also introduce a variational procedure to optimize reaction coordinates.
243 cs Autoencoder Integration (scMaui) based on variational product-of-experts autoencoders and adversar
244 s proposed and its transmission genetic, and variational properties are analysed.
245  our understanding of the organizational and variational properties of complex phenotypes.
246       Collectively, these results reveal the variational properties of murine molar development that
247  experimentally that an efficient, low-depth variational quantum algorithm with few parameters can re
248 , the quantum variational classifier, uses a variational quantum circuit(1,2) to classify the data in
249                   Moreover, we find that the variational quantum circuits exhibit noise thresholds ab
250 e the capabilities of near-term hardware for variational quantum eigensolver or more broad applicatio
251                    Compared with the popular variational quantum eigensolver(7,8), our hybrid quantum
252                                          The variational quantum eigensolver, a leading algorithm for
253            We achieve this result by using a variational quantum eigenvalue solver (eigensolver) with
254  of valid wavefunctions and is trained using variational quantum Monte Carlo.
255 ich to mitigate quantum back action, such as variational readout and squeezed light injection(7), wit
256                                 Among these, variational relativistic multiconfigurational multirefer
257                               We introduce a variational representation of quantum states based on ar
258                                     Bayesian variational representational similarity analyses on fMRI
259 actions using DFT and ab initio theories and variational RRKM/master equation (vRRKM/ME) formalism.
260                   Causality is assessed by a variational scheme based on the Information Imbalance of
261                                     From the variational solutions of the many-body master equation f
262                            Instead, accurate variational solutions of the vibration-rotation Schrodin
263 erwise inaccessible level of accuracy in the variational solutions using our noisy processor.
264                          Here we introduce a variational solver for MaxCut problems over m = O(nk) bi
265             Projecting quantum dynamics onto variational states using the time-dependent variational
266 oupled cluster methods, as well as many-body variational states.
267 election are inefficient at creating modular variational structures.
268           Solar magnetism displays a host of variational timescales of which the enigmatic 11-year su
269 ion coordinate, and it is used to locate the variational transition state that defines a transition s
270                             Conventional and variational transition state theories can predict neithe
271 basis set, have been combined with canonical variational transition state theory (CVT) and small-curv
272 te constants were calculated using canonical variational transition state theory (CVT) as well as wit
273 e reaction have been computed with canonical variational transition state theory (CVT), both with and
274  tunneling to multistructural microcanonical variational transition state theory (MS-muVT) rate const
275     This article reviews the fundamentals of variational transition state theory (VTST), its recent t
276 ined using the G3B3 theory coupled with both variational transition state theory and Rice-Ramsperger-
277 K parameters, and it eliminates the need for variational transition state theory calculations as a fu
278 -mechanical electronic structure methods and variational transition state theory kinetic calculations
279 s of the rate constants by ensemble-averaged variational transition state theory with multidimensiona
280 d tunneling effects are treated by canonical variational transition state theory with multidimensiona
281 ters to agree with multistructural canonical variational transition state theory with multidimensiona
282 l with multidimensional tunneling (canonical variational transition state theory with small curvature
283 based on coupling density functional theory, variational transition state theory, and a microscale ma
284 ransition state implied by ensemble-averaged variational transition state theory.
285 ) molecule(-)(1) s(-)(1) using the canonical variational transition state theory.
286 ein isotope labeling in the framework of the Variational Transition State Theory.
287  Then, the key interactions at the reactant, variational transition state, and product are analyzed i
288 Thermal rate coefficients are computed using variational transition-state theory (VTST) calculations
289 ing QM/MM molecular dynamics simulations and variational transition-state theory calculations.
290 miclassical calculations employing canonical variational transition-state theory drastically underpre
291  for the direct component of a reaction with variational transition-state theory for an indirect comp
292  results were reproduced in the framework of variational transition-state theory that includes a dyna
293 he dynamics of this reaction by means of the variational transition-state theory with multidimensiona
294                          We employ canonical variational transition-state theory with multidimensiona
295                                              Variational transition-state theory with semiclassical g
296 adical have been calculated using multi-path variational transition-state theory with small-curvature
297  Direct dynamics calculation using canonical variational transtition state theory (CVT) inclusive of
298                          Based on a rigorous variational treatment, we present both numerical as well
299                      Crucially, this formal (variational) treatment seeks to resolve key debates in c
300                                        Using variational wavefunctions, gauge theoretic arguments, an

 
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