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1 visuospatial discriminations (reward-guided learning).
2 al inference dictate that uncertainty shapes learning.
3 ontrol false discoveries for class-imbalance learning.
4 tably retained even more than 200 days after learning.
5 or file handling, visualization, and machine learning.
6 on to image classification and reinforcement learning.
7 s >2000 behavioral features based on machine learning.
8 ely untested method of delivering simulation learning.
9 ategies in favor of low-level implicit motor learning.
10 s variability but variability can facilitate learning.
11 tegrated predictions that may improve future learning.
12 her, when and how to try is central to human learning.
13 n the projection neurons mediates appetitive learning.
14 d joint effects of these factors upon reward learning.
15 ikely contribute to independent processes of learning.
16 plays a key role in motor control and motor learning.
17 with sensory confidence and guide subsequent learning.
18 lasticity and in response to object location learning.
19 ich limits our chances to improve intergroup learning.
20 enhancement, which has value for educational learning.
22 ppocampus subserves place and MB learning by learning a "successor representation" of relational stru
24 category emerges in the OT within minutes of learning a novel odor-reward association, whereas the pP
26 Here, we report the development of a deep learning algorithm for the prediction of local gene expr
27 tion (TMLE) paired with the ensemble machine learning algorithm Super Learner, and compared these wit
28 eveloped a new systems-biology-informed deep learning algorithm that incorporates the system of ordin
29 dvances in earthquake monitoring with a deep-learning algorithm to image a fault zone hosting a 4-yea
31 rk presents a system equipped with a machine learning algorithm, capable of continuously monitoring r
32 ction from first principles for each machine-learning algorithm, we observe that there is typically a
37 t significantly outperformed shallow machine-learning algorithms in benchmark comparisons, showing ne
38 with HLA-binding properties by using machine-learning algorithms may increase the prediction accuracy
39 ne interactions for the construction of deep-learning algorithms that benefit from expert knowledge a
40 training and a testing set and used machine-learning algorithms to classify participants based on ps
41 work is to evaluate the efficacy of machine learning algorithms to cluster the patients into discrim
42 SR) systems, which use sophisticated machine-learning algorithms to convert spoken language to text,
44 rvival hazard ratio was presented by machine-learning algorithms using survival statistics and was co
49 tics, in vivo electrophysiology, and machine learning analysis, we find that a subset of neurons in t
51 use of nonlinear kernel methods for machine learning and dimension reduction of high-dimensional dat
52 lementary roles in the implicit, unconscious learning and exploitation of spatial statistical regular
56 itical role in many processes fundamental to learning and memory in health and are implicated in Alzh
61 lays a causal role in the acquisition of new learning and not just in the extinction or reversal of p
67 and structural changes in key regions of the learning and sensory systems associated with anesthesia-
68 which dissociable neural systems support the learning and transfer of abstract control structures.SIG
69 (B) agonist baclofen impaired motor sequence learning and visuomotor learning in 20 young healthy par
70 as the testing effect or as retrieval-based learning) and consider directions for future research.
71 rojecting neurons disrupted Pavlovian reward learning, and activation of these cells promoted the acq
72 learning have only considered unintentional learning, and therefore the interaction between intentio
74 sing multiscale mechanistic docking, machine learning, and X-ray crystallography, pointing the way fo
76 ovarian tumour cohort and develop a machine learning approach to molecularly classify and characteri
81 Therefore, we have applied different machine learning approaches to generate models for predicting di
84 Effort-related decision-making and reward learning are both dopamine-dependent, but preclinical re
85 ries, including network analysis and machine learning, are well placed for analysing these data but m
86 ical projection neurons, validating transfer learning as a tool to adapt the model to novel categorie
88 ories (A items) during overlapping pair (BC) learning, as well as learning-related representational c
89 as the application of multitask and transfer learning, as well as the use of biologically motivated,
90 peline using Statistical testing and Machine Learning (ASAP-SML), to identify features that distingui
91 S implements model-free response learning by learning associations between actions and egocentric rep
93 her with a "logical" statistical and machine learning-based approach, identified a number of molecula
95 The highest-performing model used a machine learning-based genetic algorithm, with an overall receiv
98 sponse, we employed high-performance machine learning-based NER tools for concept recognition and tra
102 ing circuits may be influenced early in song learning by a cortical region (NIf) at the interface bet
103 in which hippocampus subserves place and MB learning by learning a "successor representation" of rel
104 n states; DLS implements model-free response learning by learning associations between actions and eg
105 ing may also underlie its contribution to MB learning by representing relational structure in a cogni
107 , radiomics features extraction, and machine learning can be used in a pipeline to automatically dete
108 stead, novel tools from the field of machine learning can potentially solve some of our challenges on
115 at abstraction varies at different levels of learning, cognitive development, or cognitive ability.
116 The IED task measures visual discrimination learning, cognitive flexibility and specifically attenti
117 of the multistakeholder Prior Authorization Learning Collaborative of the Value in Healthcare Initia
118 re of themodel used is set purely by machine learning considerations with little consideration of rep
120 tional lecturing with evidence-based, active-learning course designs across the STEM disciplines and
122 e used to recruit general, mental health and learning disability nurses, at different levels of senio
123 tilation scans from free-breathing MRI (deep learning [DL] ventilation MRI)-derived specific ventilat
128 ter than the models trained with single-task learning for predicting patients' individual symptom tra
130 ical data analysis and interpretable machine learning for quantifying both agent-level features and g
136 m observing outgroups.SIGNIFICANCE STATEMENT Learning from observing others is an efficient way to ac
137 enerates predictive or descriptive models by learning from training data rather than by being rigidly
139 sing feature selection algorithm and machine learning, from which the accuracy of detection of positi
143 ral circuits underlying more direct forms of learning have been well established over the last centur
144 ing the impact of valenced feedback on skill learning have only considered unintentional learning, an
145 h-care system through the establishment of a learning health system built on digital data and innovat
149 aired motor sequence learning and visuomotor learning in 20 young healthy participants of both sexes.
150 f neonatal anesthesia exposure on behavioral learning in adolescent subjects, and a variety of MRI te
153 st, we asked if well-known features of motor learning in lab-based experiments generalize to a real-w
156 how that using prior knowledge to facilitate learning is accompanied by the evolution of a neural sch
161 during the learning process, and the goal of learning is readily dissociable from the awareness of wh
163 key predictions that prestige-biased social learning is used when it constitutes an indirect cue of
164 (~20 Hz) at triplet transitions that indexes learning: it emerges with increased pattern repetitions;
166 hat the contribution of hippocampus to place learning may also underlie its contribution to MB learni
167 uggests that a targeted modulation of reward learning may be a viable approach for novel intervention
168 work was used to elucidate the reinforcement-learning mechanisms that change in adolescence and into
169 the foundation to examine observational fear learning mechanisms that might contribute to fear and an
170 omputational modeling revealed that dominant learning mechanisms underpinning flexible behavior diffe
172 MENT The dentate gyrus (DG) is important for learning, memory, pattern separation, and spatial naviga
177 d.Objectives: To develop and validate a deep learning method to improve the management of IPNs.Method
179 d biological interpretation across 8 machine learning methods and 4 different types of metagenomic da
181 nimal evidence that state-of-the-art machine learning methods can forecast the occurrence of a global
182 multivariate statistical models and machine learning methods for the classification of 6 types based
184 rediction enables the development of machine-learning methods to predict the likely biological activi
185 Among other advances, deep-learning machine learning methods, including convolutional neural network
186 ral Imaging (NIR-HSI), together with machine learning methods, is valuable to improve the efficiency
193 rams per liter using a random forest machine-learning model based on 11 geospatial environmental para
195 shift calculation protocols using a machine learning model in conjunction with standard DFT methods.
200 ues of choices, estimated by a reinforcement learning model, were regressed against BOLD signal.
202 enetic and non-genetic factors, four machine learning models have close prediction results for the ph
204 e highlight specific achievements of machine learning models in the field of computational chemistry
206 nt participants and symptoms, our multi-task learning models perform statistically significantly bett
211 walkthrough for creating supervised machine learning models with current examples from the literatur
212 election can improve the accuracy of machine-learning models, but appropriate steps must be taken to
213 The training performance of all machine learning models, including six other algorithms, was eva
218 ter is devoted to the application of machine learning, namely, convolutional neural networks to solve
221 tor Octbeta1R drives aversive and appetitive learning: Octbeta1R in the mushroom body alphabeta neuro
222 firmation bias may be adaptive for efficient learning of action-outcome contingencies, above and beyo
232 ressure values were calculated from the deep learning-predicted tonometer and mire diameters using th
233 l: learners are aware of the goal during the learning process, and the goal of learning is readily di
234 uide each other's attention, prediction, and learning processes towards salient information, at the t
236 We found that memory reactivation during learning promoted formation of differentiated representa
240 ed in this respect, how the thalamus encodes learning-related information is still largely unknown.
241 g overlapping pair (BC) learning, as well as learning-related representational change for indirectly
242 ce of this outgroup deficit in observational learning remained unknown, which limits our chances to i
244 where subjects solve multiple reinforcement learning (RL) problems differing in structural or sensor
246 ar sensitization in the stress-enhanced fear learning (SEFL) model of PTSD, as well as associated cha
248 ing a multifaceted role in socially adaptive learning.SIGNIFICANCE STATEMENT Adaptively navigating so
249 rsed to negative valence in a Pavlovian fear learning situation, where CeA ChR2 pairing increases def
254 gical workflow recognition and report a deep learning system, that not only detects surgical phases,
257 , performed worse on the Rey Auditory Verbal Learning Task (p < 0.05), and had a markedly lower IQ (p
262 rning tasks, i.e. model-free vs. model-based learning tasks, and their possible differential effects
264 ecreased exponentially across trials in both learning tasks, optimal target selection (task 1) and op
265 ysiological plasticity and to distinct motor learning tasks, which suggests they represent separate c
269 ersarial networks (GANs) utilize adversarial learning that incorporates image-level loss and is bette
272 mbine sparse mixture mapping with supervised learning to achieve bit error rates as low as 0.11% for
273 nd metabolomic platform that employs machine learning to automate the selective discovery and isolati
275 direct long-read RNA sequencing and machine learning to detect secondary structures in cellular RNAs
276 titative signal can be combined with machine learning to enable microscopy in diverse fields from can
278 rovides encouragement for the use of machine learning to extract meaningful structural information fr
280 prioritize functional sites, we used machine learning to identify 59 features indicative of proteomic
282 ally innovative in that it also uses machine learning to perform cell tracking and lineage reconstruc
285 t application of the novel NMR-based machine learning tool "Small Molecule Accurate Recognition Techn
286 ty suggests a unified role for confidence in learning under different types of uncertainty across mam
287 findings from this and non-human studies on learning under perceptual uncertainty suggests a unified
291 of evidence indicates that visual perceptual learning (VPL) is enhanced by reward provided during tra
294 re we asked whether, in the context of motor learning where errors decrease across trials, people tak
295 al processing is affected by fear extinction learning (where no US is presented), and how fear and ex
296 om body alphabeta neurons processes aversive learning, whereas Octbeta1R in the projection neurons me
297 warded actions, and the other is model-based learning, which considers the structure of the environme
299 y of these thalamic neurons increased during learning, with the learned values stably retained even m