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1 r signals required by strict formulations of backpropagation.
2 transpose operations required in traditional backpropagation.
3 mplex combines epistemic autonomy with error backpropagation.
4 ade dendrites and dendritic spines by active backpropagation.
5 t onset of somatic AP was produced solely by backpropagation.
6 c potentials and facilitate action potential backpropagation.
7 nts are consistent with active, not passive, backpropagation.
8 t require axonal action potential firing and backpropagation.
9 travel surveys are used as ground truth for backpropagation.
10 S to increase neuronal gain and the speed of backpropagation.
11 ells being diagnostic to be calculated using backpropagation.
12 owing for the calculation of gradients using backpropagation.
13 t parameters are optimized through a revised backpropagation.
14 that this distinct mechanism, in contrast to backpropagation, (1) underlies learning in a well-establ
15 to solve classification tasks using "in situ backpropagation," a photonic analog of the most popular
17 This study presents a neuromorphic, spiking backpropagation algorithm based on synfire-gated dynamic
18 ive power of this modeling framework and the backpropagation algorithm for setting the parameters.
19 iking neural networks (SNNs) using the error backpropagation algorithm has made significant progress
20 y believed that end-to-end training with the backpropagation algorithm is essential for learning good
24 g Neural Network implementation of the exact backpropagation algorithm that is fully on-chip without
26 te structure in large data sets by using the backpropagation algorithm to indicate how a machine shou
27 so far(10-22) have been unable to apply the backpropagation algorithm to train unconventional novel
28 arge models with the same performance as the backpropagation algorithm widely used in deep learning t
29 , the workhorse of modern deep learning, the backpropagation algorithm, has proven difficult to trans
33 ral networks faced a similar challenge until backpropagation and automatic differentiation transforme
35 the influence of apical length on dendritic backpropagation and excitability, based on a Na(+) chann
36 ing algorithms, such as k-nearest neighbors, backpropagation and probabilistic neural networks, often
37 of Kv4.2 subunits, regulate action potential backpropagation and the induction of specific forms of s
39 ring rates reach 40 Hz (activity-independent backpropagation); and (3) do not exhibit signs of a 'cal
42 ing decision trees, support vector machines, backpropagation artificial neural networks, extreme grad
43 hat FSI was associated with action potential backpropagation (bAP) and a supralinear increase in dend
46 utation effects from Integrated Gradients, a backpropagation-based feature attribution, and character
49 tudy on the meteorological data and types of backpropagation (BP) algorithms used to train and develo
50 that average obtained from the conventional backpropagation (BP) method can hardly overcome 0.35 and
54 Instead, recurrent networks trained with backpropagation capture the time-encoding properties and
55 In association with the enhancement of spike backpropagation, CCh increased the amplitude and duratio
56 rd Backpropagation (FFBP) and Cascadeforward Backpropagation (CFBP), were developed and trained using
57 o dopamine, the pulses of GABA prohibited AP backpropagation distally from the application site, even
58 es can likely be explained by differences in backpropagation efficiency, arising from the specific co
60 ward-propagating light and simulated in situ backpropagation for 64-port photonic neural networks tra
61 ransforming data representations, as well as backpropagation for model finetuning, saliency map compu
64 oreover, we demonstrated that AGOP, which is backpropagation-free, enabled feature learning in machin
69 ty-dependent attenuation of action-potential backpropagation in current-clamp simulations of a CA1 py
70 itic recording data means that the extent of backpropagation in thalamocortical (TC) and thalamic ret
71 alcium dynamics during action potential (AP) backpropagation in three types of V1 supragranular inter
74 tion and undergo strong attenuation in their backpropagation into the dendrites (length constant, 76
75 or local synaptic stimulation, and the rapid backpropagation into the dendritic arbor depended upon v
76 potential repolarization, repetitive firing, backpropagation (into dendrites) of action potentials, a
82 mong the various training schemes, the error backpropagation method that directly uses the firing tim
83 nberg-Marquardt, quasi-Newton, and resilient backpropagation methods are employed to train the ANN.
84 phic findings and patient age, a three-layer backpropagation network was developed to predict whether
85 the four classifiers are then fused using a backpropagation neural network (BNN) to diagnose each re
87 rs evaluated the performance of feed-forward backpropagation neural networks in predicting rapid prog
88 f the spectra using the multivariate methods backpropagation neural networks, decision tree, adaboost
89 ting the frequency of repetitive firing, the backpropagation of action potential into dendrites, and
90 onsiders nonlinear dendritic integration and backpropagation of action potentials from the soma to th
91 tion of synaptic input or the initiation and backpropagation of action potentials in a branch-selecti
92 ing expression of Nav1.2 channels attenuates backpropagation of action potentials into dendrites of c
93 s to an increase in synaptic integration and backpropagation of action potentials into distal dendrit
95 ppear at odds with the unusually weak active backpropagation of action potentials into the soma and d
100 the dendritic arbor, calcium signals during backpropagation of both single APs and AP trains were re
101 of p-hydroxyphenacyl (pHP) GABA demonstrates backpropagation of GABAAR-mediated depolarizations from
103 ials in the axon initial segment followed by backpropagation of these spikes throughout the neuron re
104 this computation,(1)(,)(2) facilitating the backpropagation of value from the predicted reward to th
105 works have reinvigorated interest in whether backpropagation offers insights for understanding learni
107 opamine is known to inhibit action potential backpropagation, our experiments revealed an unexpected
110 and action potential output caused by spike backpropagation results in the appearance of high spike
112 tal deep-learning models primarily relies on backpropagation that is unsuitable for physical implemen
113 xclusively controls I(NaP) generation and AP backpropagation, thereby playing a prominent role in syn
115 introduce the mechanical analogue of in situ backpropagation to enable highly efficient training of m
117 nity, and we experimentally demonstrate this backpropagation to obtain gradient with high precision.
118 called physics-aware training, that applies backpropagation to train controllable physical systems.
119 ng between inner layers is scrambled because backpropagation training does not require perceptrons to
123 med that credit assignment is best solved by backpropagation, which is also the foundation of modern
124 s-aware training combines the scalability of backpropagation with the automatic mitigation of imperfe
125 and (iii) can be specified and trained using backpropagation with the same ease-of-use as contemporar