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1 arent way under the principle of growth-rate maximization.
2 flight list-mode ordered-subsets expectation maximization.
3 fit from phase stabilization through entropy maximization.
4 een put forward through collective influence maximization.
5 ments were in directions predicted by reward maximization.
6 nference, effectively performing expectation maximization.
7 by surprise minimization compared to utility maximization.
8 an economic models based on endpoint utility maximization.
9 sing pixel-based ordered-subsets expectation maximization.
10 nterface, and options for speed and accuracy maximization.
11 ations in which experience does not increase maximization.
12 iple does exist, although it differs from R0 maximization.
13 NA production during phases of transcription maximization.
14 avior may instead reflect constrained reward maximization.
15 ique termed variational Bayesian expectation maximization.
16 ics deliver strong performance for influence maximization.
17 es and then classified them using modularity maximization.
18 ted with risk-preferences and expected-value maximization.
19 ement-related signals used to sustain reward-maximization.
20 ar, compared with ordered-subset expectation maximization.
21 able and theoretically important for utility maximization.
22 power over interval mapping with expectation maximization.
23 the 3-dimensional ordered-subset expectation maximization (3DOSEM) and the 3-dimensional maximum a po
24               In halophytes, however, profit-maximization (4) predicts systematically higher psi(l) t
25            We use an alternating expectation-maximization (AEM) algorithm, alternating between estima
26                               An expectation-maximization algorithm and another two stochastic versio
27  using k-means clustering or the expectation-maximization algorithm applied to a Gaussian mixture mod
28 meters, Bisulfighter can use the expectation-maximization algorithm for HMMs to adjust parameters for
29      Unlike MEME, which uses the expectation-maximization algorithm for motif discovery, EXTREME uses
30                               An expectation maximization algorithm is used to infer the parameters o
31 dimeric TF-binding motifs and an expectation maximization algorithm MODER2 for learning such models f
32 finite mixture framework with an expectation-maximization algorithm that considers two motifs jointly
33 c Pacemaker (EPM), a conditional expectation maximization algorithm that estimates epigenetic landsca
34 s to increase sensitivity and an expectation maximization algorithm that iteratively recalibrates bas
35 ll SeqEM, applies the well-known Expectation-Maximization algorithm to an appropriate likelihood for
36                     CLAM uses an expectation-maximization algorithm to assign multi-mapped reads and
37 rameters are determined using an expectation maximization algorithm to both address missing data and
38 scovery, EXTREME uses the online expectation-maximization algorithm to discover motifs.
39                      VGA uses an expectation-maximization algorithm to estimate abundances of the ass
40                       We used an expectation-maximization algorithm to estimate the parameters underl
41           We show how to use the expectation-maximization algorithm to find the posterior mode of the
42 t variance and a bootstrap-based expectation maximization algorithm to handle extensive missing data.
43 se probability weighting, or the expectation-maximization algorithm to impute missing data were found
44 lihood approach together with an expectation-maximization algorithm to jointly estimate allelic dropo
45 ovide a tool, L1EM that uses the expectation maximization algorithm to quantify LINE-1 RNA at each ge
46 an inference with the stochastic Expectation-Maximization algorithm to quantify underlying diffusion
47            Our approach uses the Expectation Maximization algorithm to train a site-of-metabolism mod
48                              The expectation-maximization algorithm was used to derive estimates for
49 nal on the random effect, and an Expectation-Maximization algorithm where we further condition the ra
50  ratings can be inferred with an expectation-maximization algorithm whose running time scales linearl
51 ordinary Poisson ordered-subsets expectation maximization algorithm with point-spread function and ti
52 mated fusion abundance using the Expectation-Maximization algorithm with sparse optimization, and fur
53 del could be estimated using the expectation-maximization algorithm with the observed distribution of
54  cnvCSEM (CNV-guided ChIP-Seq by expectation-maximization algorithm), a flexible framework that incor
55 mars from training data (via the Expectation Maximization algorithm).
56                       We use the expectation-maximization algorithm, a classic statistical technique
57 , we have developed an optimized expectation-maximization algorithm, designated HPV-EM, to address th
58  to the standard HMM based on an expectation-maximization algorithm, leading to more accurate and rel
59 ptimized automatically using the expectation-maximization algorithm, taking the number of open channe
60 -expression network analysis, and Modularity Maximization algorithm, to analyze novel RNA-Seq data to
61 selection and can be fit with an expectation maximization algorithm, we call Cox-assisted clustering.
62 models, l1 minimization, and the expectation-maximization algorithm, we prove that spectrotemporal pu
63 line-of-response ordered-subsets expectation-maximization algorithm, with the baseline algorithm plus
64 data in an implementation of the expectation-maximization algorithm.
65 d the standard Variational Bayes Expectation Maximization algorithm.
66 s and is maximized with a hybrid expectation-maximization algorithm.
67  a PET list-mode ordered-subsets expectation maximization algorithm.
68 triads can contribute through an expectation-maximization algorithm.
69 nference is obtained through the Expectation-Maximization algorithm.
70 son regression together with the expectation-maximization algorithm.
71 plotypes were estimated with the expectation-maximization algorithm.
72 uencies were estimated using the expectation maximization algorithm.
73 ructed with a maximum-likelihood expectation maximization algorithm; the system model includes the TO
74 other two stochastic versions of expectation-maximization algorithms are described.
75                                  Expectation maximization algorithms were used to perform maximum lik
76 Bayesian inference as compared to likelihood maximization alone, for both accuracy and precision.
77 e minimization compared to reward or utility maximization alone.
78 ribe KODAMA (knowledge discovery by accuracy maximization), an unsupervised and semisupervised learni
79                                     Accuracy Maximization Analysis (AMA) is a recently developed Baye
80 eralist ME model reflecting both growth rate maximization and "hedging" against uncertain environment
81 ng 2-dimensional ordered-subsets expectation maximization and 3-dimensional maximum a posteriori prob
82  show how the principle of inclusive fitness maximization and a related principle of quasi-inclusive
83 cted using 3D maximum-likelihood expectation maximization and analyzed with software.
84 ircuits seem to drive behavior toward reward maximization and effort minimization.
85  expectations, could account for both reward maximization and effort minimization.
86  to be simulated as a combination of fitness maximization and evolutionary constraints.
87 on procedure was developed that uses entropy maximization and is robust with respect to noise and sig
88 indicate that individual differences in gain maximization and loss minimization are linked to individ
89 ructed using both ordered-subset expectation maximization and Q.Clear (block-sequential regularized e
90 butive decisions are consistent with utility maximization and to decompose underlying preferences int
91 mic choice away from logical calculation and maximization and toward biologically plausible mechanism
92 eneric scheme that places pragmatic (utility maximization) and epistemic (uncertainty minimization) i
93 ehavioural implications of inclusive fitness maximization, and point to a possible way in which evolu
94 l Kidney Allocation Scheme (NKAS) and a QALY maximization approach designed to maximize health gains
95 patients who received a transplant, the QALY maximization approach generated 48 045 QALYs and cost po
96          Compared with the 2006 NKAS, a QALY maximization approach makes more efficient use of deceas
97 lying on imputed data, we use an expectation-maximization approach to estimate marginal density funct
98 ansition matrix is trained by an Expectation-Maximization approach, and a stochastic gradient descent
99 of pound 110 741/QALY compared with the QALY maximization approach.
100 the model parameters, obtained by likelihood maximization, are transferable.
101      We additionally describe an expectation maximization based iterative algorithmic approach which
102 , we propose two new approaches to influence maximization based on two very different metrics.
103 based posterior inference and an expectation maximization-based algorithm for posterior approximation
104                Consequently, many existing Q maximization-based modularity algorithms yield variable
105 n matrix factorization (BMF) via expectation maximization (BEM).
106 nd for given species densities, simultaneous maximization by all plants yields an equilibrium charact
107 related principle of quasi-inclusive fitness maximization can be derived from axioms on an individual
108 approach, utilizing the powerful expectation maximization classification algorithm to examine regions
109 e Voronoi tessellation and using expectation-maximization clustering and Random Forest classification
110 ream with real-time evolution for activation maximization) combined a generative neural network and a
111 lled Debris Identification using Expectation Maximization (DIEM).
112 n of RNA folding ensembles using expectation-maximization' (DREEM), which reveals the alternative con
113 abilities using a combination of expectation-maximization (EM) algorithm and average information rest
114 ing an empirical approach and an expectation-maximization (EM) algorithm developed for estimation and
115 imum likelihood method using the expectation-maximization (EM) algorithm for optimization is commonly
116                              The Expectation-Maximization (EM) algorithm has been successfully applie
117              The accuracy of the expectation maximization (EM) algorithm in the presence of alternati
118 cy than the implementation of an Expectation-Maximization (EM) algorithm incorporated in the program
119 eloped for motif-finding use the expectation-maximization (EM) algorithm iteratively.
120  this paper a privacy-preserving Expectation-Maximization (EM) algorithm to build GLMM collaborativel
121 ive bias removal with a weighted expectation maximization (EM) algorithm to distribute reads among is
122                   We invented an Expectation-Maximization (EM) algorithm to divide patients into low-
123 tistical model and a variational expectation maximization (EM) algorithm to estimate non-reference al
124                       We use the Expectation-Maximization (EM) algorithm to estimate the parameters i
125                  We developed an expectation-maximization (EM) algorithm to estimate the variance par
126                We develop a fast expectation-maximization (EM) algorithm to fit models by estimating
127 er popular motif finders use the expectation-maximization (EM) algorithm to optimize their parameters
128 hypothesis, we used an iterative expectation maximization (EM) algorithm to quantify transcriptomes a
129                              The expectation maximization (EM) algorithm used to fit the model iterat
130 parameters are obtained using an expectation-maximization (EM) algorithm, and pseudogenes are utilize
131                    We present an expectation-maximization (EM) algorithm, derived for recombinant inb
132            When coupled with the Expectation-Maximization (EM) algorithm, reads can be assigned far m
133 al domains, we have developed an Expectation-Maximization (EM) algorithm-based Essential Domain Predi
134 ely estimated from the developed expectation-maximization (EM) algorithm.
135 rameters were obtained using the expectation maximization (EM) algorithm.
136 cients from NGS data based on an expectation-maximization (EM) algorithm.
137 ocedure that, when combined with expectation-maximization (EM) algorithms for parameter estimation, y
138         We distribute Baum-Welch Expectation Maximization (EM) algorithms running on our model in two
139      In this report, we extended expectation-maximization (EM) algorithms to incorporate prior networ
140 penalized likelihood methods and expectation-maximization (EM) algorithms, are studied and tested und
141 del reduction, and their related expectation-maximization (EM) algorithms.
142               We also propose an expectation-maximization (EM) based algorithm to estimate the unknow
143 ning a greedy algorithm with the Expectation-Maximization (EM) method for haplotype inference based o
144           A variational Bayesian Expectation Maximization (EM) with smoothed probabilities (VBEMS) al
145 isher scoring algorithm with the expectation maximization (EM)-based ML method, we also developed a s
146                  We implement an expectation maximization (EM)-like method to estimate mutation-speci
147 ikelihood estimation (MLE) using expectation maximization (EM); the set cover approach maximum specif
148  at least 120 maximum likelihood expectation maximization equivalent iterations, including a point sp
149 Using EvoPrinterHD- and Multiple Expectation Maximization for Motif Elicitation-based computational a
150 evels in a way that approximates information maximization for navigation.
151 s while relying on community-level objective maximization for the outer problem.
152 ltiGPS is based on a generalized Expectation Maximization framework that shares information across mu
153                  ParsSNP uses an expectation-maximization framework to find mutations that explain tu
154               We then develop an expectation-maximization framework to obtain the automatic segmentat
155 hat they emerge naturally under future state maximization (FSM).
156 istics (Haploview) as well as by expectation-maximization haplotype phase inference (HAP) showed a gr
157                     The mechanisms of reward maximization have been extensively studied at both the c
158 psi(l) , and determined under four different maximization hypotheses: water uptake (1), carbon assimi
159 um repeaters and theory of entanglement rate maximization in an entangled network structure.
160 erically reliable solution method for growth maximization in ME models using a quad-precision NLP sol
161 nization in disease spreading, and influence maximization in opinion dynamics.
162  by 2-dimensional ordered-subset expectation maximization into single-frame images and dynamic images
163 tions (M models), are multiscale, and growth maximization is a nonlinear programming (NLP) problem, m
164                                    Influence Maximization is a NP-hard problem of selecting the optim
165 hat decision threshold modulation for reward maximization is accompanied by a change in effective con
166                                              Maximization is accomplished by a minorize-maximize (MM)
167 led stability analysis and entanglement rate maximization is conceived for the quantum Internet.
168                     The principle of entropy maximization is employed to connect estimated moments to
169                                         This maximization is performed efficiently by a version of th
170 enbasis of his original reduced state, where maximization is performed over all positive-operator val
171                                    Influence maximization is the problem of finding the set of nodes
172           An algorithm, based on Expectation-Maximization, is presented here for learning the categor
173 -art methods, including K-means, expectation maximization, latent Dirichlet allocation-based clusteri
174 s then updated using an expectation (E)- and maximization (M)-like procedure.
175 cient version of the Monte Carlo expectation-maximization (MCEM) algorithm.
176 using a Markov chain Monte Carlo expectation-maximization (MCMC-EM) algorithm, and information criter
177                               An expectation maximization method assigns likelihood values to all spl
178 resent a weighted-log-likelihood expectation maximization method on isoform quantification (WemIQ).
179 y can be achieved using the soft expectation maximization method, whereby each sequence is attributed
180 ions, which is trained using the expectation maximization method.
181        The framework includes a new minorize-maximization (MM) algorithm for generalized linear model
182 empirical soil moisture function, the profit maximization model improved the simulation of evapotrans
183                       We tested a new profit maximization model, where photosynthetic uptake of CO(2)
184 ns may include, among others, the concurrent maximization of a bioproduct and of biomass, or maximiza
185 imization of a bioproduct and of biomass, or maximization of a bioproduct while minimizing the format
186 ped a clustering method based on expectation maximization of a Gaussian mixture that accounts for loc
187              Ultimately, this enables both a maximization of assay sensitivity and a reduction in ass
188 optimal sleep surfaces may contribute to the maximization of athletic performances, and further studi
189                We present EMBER (Expectation Maximization of Binding and Expression pRofiles), a meth
190  possible genetic constraints preventing the maximization of both, is crucial from both an evolutiona
191 tion, demonstrating their functional role in maximization of Cl(-) flux.
192 iched towards frameshift mutations, allowing maximization of CRISPR/Cas9 phenotype penetrance in the
193 lassifier through a Monte Carlo procedure of maximization of cross-validated predictive accuracy.
194  to energy (WTE) performance is evaluated by maximization of electrical energy production and through
195 generates directional entropic forces is the maximization of entropy by optimizing local particle pac
196          Statistical mechanics relies on the maximization of entropy in a system at thermal equilibri
197 nd affects optimal breeding date, defined by maximization of fitness.
198                    It takes into account the maximization of homogeneity of peak spreading (H(s)/A(s)
199 nse and cell survival by mediating the rapid maximization of hsp70 expression.
200 torsional effects at the BZD ring fusion and maximization of imine and amide resonance are proposed t
201                                              Maximization of information gain reduces, by orders of m
202                           These data suggest maximization of information transmission per energy used
203 ubject to weak but significant selection for maximization of initiation rate and, consequently, prote
204                        Here our focus is the maximization of likelihood over branch lengths of a give
205 bitrary elemental stoichiometry of life; and maximization of limiting resource use efficiency across
206       These data question the indication for maximization of lymphadenectomy after nCRT.
207 a softer phase - can theoretically result in maximization of material toughness, with little expense
208 ximization of seawater desalination; and (3) maximization of nonpotable water reclamation.
209  international collaborations will result in maximization of our resources and patients, permitting u
210 e that their assembly can be understood from maximization of packing density only in a first approxim
211 ovements in nocturnal vision would depend on maximization of photon capture at the expense of image d
212 ncements at the star tips contributed to the maximization of plasmon coupling between LSPs and SPs as
213                 Under the assumptions of (i) maximization of preference in choosing a friend, (ii) mu
214 sis, minimization of metabolic adjustment or maximization of product yield exhibiting systematic erro
215               Optimality theory predicts the maximization of productivity in social insect colonies,
216                                          The maximization of reliability and specificity of diagnosis
217  behaviour can be understood in terms of the maximization of reproductive value.
218 wards goals or targets are based upon either maximization of resource acquisition or risk avoidance,
219 1) maximization of traditional supplies; (2) maximization of seawater desalination; and (3) maximizat
220   We compared the effects of such consequent maximization of stroke volume index with a regime using
221                                              Maximization of surface area is key to the optimization
222 al precursor and the support, resulting in a maximization of the amount of accessible metallic nickel
223 gh-spin N-bonded Mn(II) ion that enables the maximization of the attractive van der Waals interaction
224 ow that the optimal measurements used in the maximization of the classical correlation in terms of li
225                                     As such, maximization of the electronic delocalization of pai-orb
226 imization problem by drawing an analogy with maximization of the entropy for a given energy in statis
227                                     However, maximization of the extent of tumor resection is hampere
228                                          The maximization of the objective function of a computationa
229 een the SV and ST, is thought to result in a maximization of the pressure difference between the SV a
230 ng and the optimization of which becomes the maximization of the ratio of the free energy gap between
231 to the BM in this region, and consequently a maximization of the resulting BM velocity.
232                                      For the maximization of the surface charge density in triboelect
233 entify thermodynamic conditions leading to a maximization of the thermoelectric response of aqueous s
234 lfa leaves was optimised by the simultaneous maximization of the yield and bioaccessibility as a fact
235 m the two powerful platforms and thereby the maximization of their combined strengths for application
236 nical and practical limitations impeding the maximization of their full clinical and preclinical pote
237 etworks evolve based on the principle of the maximization of their internal information flow capacity
238 rios were evaluated for each study area: (1) maximization of traditional supplies; (2) maximization o
239  the minimization of data redundancy and the maximization of variable relevancy.
240 important for early medical presentation and maximization of visual prognosis in some cases.
241                                              Maximization of whole-cell affinities may enable these o
242          We show that our alternative carbon-maximization optimization is consistent with plant compe
243 heir decisions either based purely on payoff maximization or by imitating the vaccination behavior of
244  brain circuits drive behavior toward reward maximization or effort minimization.
245 Our method can be used to explore a range of maximization or minimization hypotheses, providing new p
246 imal metabolic phenotypes through concurrent maximization or minimization of multiple metabolic marke
247  estimating model parameters, by expectation maximization or related approaches; however, this requir
248  performed with 2 ordered-subset expectation maximization (OSEM) algorithms: attenuation-corrected (A
249                  Ordered-subsets expectation maximization (OSEM) is popular for PET studies because o
250 with standardized ordered-subset expectation maximization (OSEM) known to fulfill EANM harmonizing st
251  range of BPL and ordered-subset expectation maximization (OSEM) reconstructions on a PET/CT scanner.
252  range of BPL and ordered-subset expectation maximization (OSEM) reconstructions on a PET/CT scanner.
253 package including ordered-subset expectation maximization (OSEM) with depth-dependent 3-dimensional r
254 constructed using ordered-subset expectation maximization (OSEM), OSEM with point-spread function (PS
255 ional efficiency of LLR, a novel expectation-maximization-path (EM-path) algorithm has been developed
256 logy, which we call perturbation expectation-maximization (pEM), that simultaneously analyzes a popul
257  using 2 methods: ordered-subset expectation maximization (PET(OSEM)) or ordered-subset expectation m
258 ation algorithm is based on the minorization-maximization principle combined with gradient ascent and
259 ative view which may also be formulated as a maximization principle: The electrostatic noise acting o
260                                The Influence Maximization Problem (IMP) aims to discover the set of n
261     Despite that CI applies to the influence maximization problem in percolation model, it is still i
262 Moreover, we exactly map the complex utility maximization problem to the classic K -means clustering
263 single tumor, and we describe an expectation-maximization procedure for estimating the clonal genotyp
264                     We derive an Expectation-Maximization procedure with closed-form updates that mon
265        Dynamic filter employs an expectation-maximization process to adjust the kinetic model in coar
266  enabled by a Markov Chain Monte Carlo-based maximization process, executed on up to 24 parallel comp
267 ow that using WGCNA combined with Modularity Maximization, provides a more biologically interpretable
268 porated into any least-squares or likelihood-maximization QTL-mapping approach.
269           The maximum-likelihood expectation maximization reconstructed image of a point source in ai
270  to a widely used ordered-subset expectation-maximization reconstruction (Flash3D).
271  ordinary Poisson ordered-subset expectation maximization reconstruction on quantitative accuracy and
272 per bed position; ordered-subset expectation maximization reconstruction with at least 120 maximum li
273  PET/CT studies (ordered-subsets expectation maximization reconstruction, CT attenuation correction)
274 e time-of-flight ordered-subsets expectation maximization reconstruction, similar to the way time-of-
275 ing 3-dimensional ordered-subset expectation maximization reconstruction.
276 s (IEV) or decreases (DEV), such that reward maximization requires either speeding up (Go learning) o
277 ethod, called the stochastic expectation and maximization (SEM) algorithm, to analyze the association
278 anism, based around such spiking expectation maximization (SEM) networks whose combined outputs are m
279 , we propose the surprise-minimization-value-maximization (SMVM) approach.
280          The proposed algorithm, expectation-maximization sparse discriminant analysis (EM-SDA), prod
281 proposed models by incorporating Expectation-Maximization steps into the extremely fast cyclic coordi
282  scale-invariant as a consequence of entropy maximization that is known as Lewis's Law (scaling param
283 We develop an algorithm based on Expectation-Maximization to estimate the process noise parameters fr
284 e different effects, and employs expectation-maximization to iteratively estimate sgRNA knockout effi
285 rk employs the economist's theory of utility maximization to model people's decision regarding their
286 r using M13 genomic DNA and used expectation maximization to obtain robust maximum-likelihood estimat
287 al gold standard-ordered-subsets expectation maximization-using CT-based AC in PET/CT, as well as the
288     We found that, across participants, gain maximization was predicted by differences in amplitude o
289    Two semiautomatic algorithms, expectation maximization, weighted intensity, a priori information a
290 ariable analysis measured by the expectation maximization, weighted intensity, a priori information,
291 however, rates of statin intensification and maximization were low and varied substantially across ho
292 6 s/frame, using ordered-subsets expectation maximization with 4 iterations and 32 subsets.
293 t-mode unrelaxed ordered-subsets expectation maximization with chronologically ordered subsets and a
294 racterization of how humans trade off reward maximization with effort minimization to examine the neu
295 n, we created bursty Monte Carlo expectation-maximization with modified cross-entropy method ('bursty
296    We have developed Monte Carlo Expectation-Maximization with Modified Cross-Entropy Method (MCEM(2)
297 arameters may be estimated using expectation maximization with only a very limited amount of data (e.
298 on (PET(OSEM)) or ordered-subset expectation maximization with point-spread function (PET(PSF)).
299 ar (block-sequential regularized expectation maximization with point-spread function modeling) and we
300  However, subjects who departed from utility maximization, working more in collaborative situations,

 
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