1
Robust Closed-Loop Control of a Cursor in a Person with Tetraplegia using Gaussian Process Regression
2
Rapid calibration of an intracortical brain–computer interface for people with tetraplegia
3
Restoration of reaching and grasping in a person with tetraplegia through brain-controlled muscle stimulation: a proof-of-concept demonstration
4
Large-Scale Evolution of Image Classifiers
5
Review: Human Intracortical Recording and Neural Decoding for Brain–Computer Interfaces
6
High performance communication by people with paralysis using an intracortical brain-computer interface
7
Feedback control policies employed by people using intracortical brain–computer interfaces
8
An Ensemble Kalman Filter for Numerical Weather Prediction Based on Variational Data Assimilation: VarEnKF
9
Rapid control and feedback rates enhance neuroprosthetic control
10
Neural Architecture Search with Reinforcement Learning
11
Online Bayesian Phylogenetic Inference: Theoretical Foundations via Sequential Monte Carlo
12
Making brain–machine interfaces robust to future neural variability
13
The discriminative Kalman filter for nonlinear and non-Gaussian sequential Bayesian filtering
14
Restoring cortical control of functional movement in a human with quadriplegia
15
Grid Based Nonlinear Filtering Revisited: Recursive Estimation & Asymptotic Optimality
16
Particle filtering and the laplace method for target tracking
17
Robust Brain-Machine Interface Design Using Optimal Feedback Control Modeling and Adaptive Point Process Filtering
18
Virtual typing by people with tetraplegia using a self-calibrating intracortical brain-computer interface
19
Bayesian Phylogenetic Inference Using a Combinatorial Sequential Monte Carlo Method
20
Clinical translation of a high-performance neural prosthesis
21
The Kalman Laplace filter: A new deterministic algorithm for nonlinear Bayesian filtering
22
An Empirical Exploration of Recurrent Network Architectures
23
Neural population dynamics in human motor cortex during movements in people with ALS
24
A neural network that finds a naturalistic solution for the production of muscle activity
25
Neural Point-and-Click Communication by a Person With Incomplete Locked-In Syndrome
26
LSTM: A Search Space Odyssey
27
Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift
28
Modulation Depth Estimation and Variable Selection in State-Space Models for Neural Interfaces
29
Ten-dimensional anthropomorphic arm control in a human brain−machine interface: difficulties, solutions, and limitations
30
Iterative unscented statistically linearized filter for nonlinear Gaussian observation models
31
High-performance brain-machine interface enabled by an adaptive optimal feedback-controlled point process decoder
32
Non-causal spike filtering improves decoding of movement intention for intracortical BCIs
33
Recurrent Neural Network Regularization
34
Closed-Loop Decoder Adaptation Shapes Neural Plasticity for Skillful Neuroprosthetic Control
35
Reliability of directional information in unsorted spikes and local field potentials recorded in human motor cortex
36
Neural Decoding with Kernel-Based Metric Learning
37
Deep learning in neural networks: An overview
38
Restoring sensorimotor function through intracortical interfaces: progress and looming challenges
39
A Tensor-Product-Kernel Framework for Multiscale Neural Activity Decoding and Control
40
Self-recalibrating classifiers for intracortical brain–computer interfaces
41
Sequential Quasi-Monte Carlo
42
Algorithms for the analysis of ensemble neural spiking activity using simultaneous-event multivariate point-process models
43
Using Reinforcement Learning to Provide Stable Brain-Machine Interface Control Despite Neural Input Reorganization
44
Cue to action processing in motor cortex populations.
45
An Overview of Bayesian Methods for Neural Spike Train Analysis
46
The Database for Reaching Experiments and Models
47
Dropout Improves Recurrent Neural Networks for Handwriting Recognition
48
Towards autonomous neuroprosthetic control using Hebbian reinforcement learning
49
Bayesian Filtering and Smoothing
50
Advantages of closed-loop calibration in intracortical brain–computer interfaces for people with tetraplegia
51
Design and Analysis of Closed-Loop Decoder Adaptation Algorithms for Brain-Machine Interfaces
52
Advances in Neuroprosthetic Learning and Control
53
Intra-day signal instabilities affect decoding performance in an intracortical neural interface system
54
Kernel Methods on Spike Train Space for Neuroscience: A Tutorial
55
High-performance neuroprosthetic control by an individual with tetraplegia
56
ADADELTA: An Adaptive Learning Rate Method
57
Conditional Probabilities of Multivariate Poisson Distributions
58
Accurate decoding of reaching movements from field potentials in the absence of spikes
59
A study of MAP estimation techniques for nonlinear filtering
60
Fourier-Hermite Kalman Filter
61
Neural population dynamics during reaching
62
Reach and grasp by people with tetraplegia using a neurally controlled robotic arm
63
A recurrent neural network for closed-loop intracortical brain–machine interface decoders
64
Algorithms for Learning Kernels Based on Centered Alignment
65
Some Relations Between Extended and Unscented Kalman Filters
66
Phylogenetic Inference via Sequential Monte Carlo
67
Adaptive Decoding for Brain-Machine Interfaces Through Bayesian Parameter Updates
68
Adaptive Kalman filtering for closed-loop Brain-Machine Interface systems
69
Adaptive Gaussian Sum Filter for Nonlinear Bayesian Estimation
70
How advances in neural recording affect data analysis
71
Adaptive Subgradient Methods for Online Learning and Stochastic Optimization
72
Multiple Kernel Learning Algorithms
73
Decoding Complete Reach and Grasp Actions from Local Primary Motor Cortex Populations
74
Dissipation and oscillatory solvation forces in confined liquids studied by small-amplitude atomic force spectroscopy
75
Particle Markov chain Monte Carlo methods
76
Understanding the difficulty of training deep feedforward neural networks
77
Gaussian Processes for Machine Learning (GPML) Toolbox
78
Neural prosthetic systems: Current problems and future directions
79
Discriminatively trained particle filters for complex multi-object tracking
80
Cubature Kalman Filters
81
Functional network reorganization during learning in a brain-computer interface paradigm
82
Kernel-ARMA for Hand Tracking and Brain-Machine interfacing During 3D Motor Control
83
Neural control of computer cursor velocity by decoding motor cortical spiking activity in humans with tetraplegia
84
GP-BayesFilters: Bayesian filtering using Gaussian process prediction and observation models
85
Saddlepoint Approximations with Applications
86
Cortical control of a prosthetic arm for self-feeding
87
Descending pathways in motor control.
88
Primary Motor Cortex Tuning to Intended Movement Kinematics in Humans with Tetraplegia
89
GP-UKF: Unscented kalman filters with Gaussian process prediction and observation models
90
Prediction of upper limb muscle activity from motor cortical discharge during reaching
91
Discrete-Time Nonlinear Filtering Algorithms Using Gauss–Hermite Quadrature
92
An Overview of Existing Methods and Recent Advances in Sequential Monte Carlo
93
Volitional control of neural activity: implications for brain–computer interfaces
94
Inference in Hidden Markov Models
95
Sensors for brain-computer interfaces
96
Brain-Controlled Interfaces: Movement Restoration with Neural Prosthetics
97
Brain–machine interfaces: past, present and future
98
Efficient Block Sampling Strategies for Sequential Monte Carlo Methods
99
Neuronal ensemble control of prosthetic devices by a human with tetraplegia
100
Sparse Gaussian Processes using Pseudo-inputs
101
A Unifying View of Sparse Approximate Gaussian Process Regression
102
Efficient data assimilation for spatiotemporal chaos: A local ensemble transform Kalman filter
103
Elements of Information Theory
104
Backward-Smoothing Extended Kalman Filter
105
Nonlinear filters: beyond the Kalman filter
106
Comparison of resampling schemes for particle filtering
107
Statistical issues in the analysis of neuronal data.
108
Discriminative Training of Kalman Filters
109
Gaussian sum particle filtering
110
Gaussian mixture sigma-point particle filters for sequential probabilistic inference in dynamic state-space models
111
Curse of dimensionality and particle filters
112
Monte Carlo Strategies in Scientific Computing
113
Direct Cortical Control of 3D Neuroprosthetic Devices
114
Brain–computer interfaces for communication and control
115
A local ensemble Kalman filter for atmospheric data assimilation
116
The Time-Rescaling Theorem and Its Application to Neural Spike Train Data Analysis
117
A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking
118
Gaussian particle filtering
119
Expectation Propagation for approximate Bayesian inference
120
People tracking using hybrid Monte Carlo filtering
121
Gaussian filter for nonlinear filtering problems
122
New developments in state estimation for nonlinear systems
123
The unscented Kalman filter for nonlinear estimation
124
Learning to Forget: Continual Prediction with LSTM
125
On sequential Monte Carlo sampling methods for Bayesian filtering
126
Rao-Blackwellised Particle Filtering for Dynamic Bayesian Networks
127
Nonlinear filtering via generalized Edgeworth series and Gauss-Hermite quadrature
128
Gaussian filters for nonlinear filtering problems
129
Variational Learning for Switching State-Space Models
130
Dual Estimation and the Unscented Transformation
131
Filtering via Simulation: Auxiliary Particle Filters
132
Metric-space analysis of spike trains: theory, algorithms and application
133
Long Short-Term Memory
134
Conditioning as disintegration
135
New extension of the Kalman filter to nonlinear systems
136
Gauss-Newton approximation to Bayesian learning
137
Neural speech enhancement using dual extended Kalman filtering
138
An adaptive Gaussian sum algorithm for radar tracking
139
The Utah intracortical Electrode Array: a recording structure for potential brain-computer interfaces.
140
Dual Kalman Filtering Methods for Nonlinear Prediction, Smoothing and Estimation
141
The Effects of Adding Noise During Backpropagation Training on a Generalization Performance
142
Monte Carlo Filter and Smoother for Non-Gaussian Nonlinear State Space Models
143
On optimal ℓ∞ to ℓ∞ filtering
144
Exact adaptive filters for Markov chains observed in Gaussian noise
145
Direct cortical representation of drawing.
146
A state-space approach to adaptive RLS filtering
147
How to count and guess well: Discrete adaptive filters
148
Sequential data assimilation with a nonlinear quasi‐geostrophic model using Monte Carlo methods to forecast error statistics
149
A state-space approach to adaptive filtering
150
Novel approach to nonlinear/non-Gaussian Bayesian state estimation
151
The iterated Kalman filter update as a Gauss-Newton method
152
Bayesian Interpolation
153
Dynamic linear models with switching
154
Approximation capabilities of multilayer feedforward networks
155
Primate motor cortex and free arm movements to visual targets in three- dimensional space. II. Coding of the direction of movement by a neuronal population
156
Exact finite dimensional nonlinear filters
157
Exact finite dimensional nonlinear filters for continuous time processes with discrete time measurements
158
On the relations between the direction of two-dimensional arm movements and cell discharge in primate motor cortex
159
Applications of a Method for the Efficient Computation of Posterior Distributions
160
Exact finite-dimensional filters for certain diffusions with nonlinear drift
161
Optimal nonlinear estimation for a class of discrete-time stochastic systems
162
Recursive estimation from discrete-time point processes
163
Applied optimal estimation
164
Measurement updating using the U-D factorization
165
Fast triangular formulation of the square root filter.
166
Some modified matrix eigenvalue problems
167
Nonlinear Bayesian estimation using Gaussian sum approximations
168
Discrete square root filtering: A survey of current techniques
169
Recursive bayesian estimation using gaussian sums
170
Monte Carlo techniques for prediction and filtering of non-linear stochastic processes
171
THEORY AND APPLICATIONS OF KALMAN FILTERING
172
Extension of square-root filtering to include process noise
173
Monte Carlo techniques to estimate the conditional expectation in multi-stage non-linear filtering†
174
Suboptimal state estimation for continuous-time nonlinear systems from discrete noisy measurements
175
A square root formulation of the Kalman covariance equations.
176
Approximations to optimal nonlinear filters
177
Estimation of the state of a nonlinear process in the presence of nongaussian noise and disturbances
178
An Algorithm for Least-Squares Estimation of Nonlinear Parameters
179
New Results in Linear Filtering and Prediction Theory
180
Extrapolation, Interpolation, and Smoothing of Stationary Time Series, with Engineering Applications
181
A METHOD FOR THE SOLUTION OF CERTAIN NON – LINEAR PROBLEMS IN LEAST SQUARES
182
A High-Performance Keyboard Neural Prosthesis Enabled by Task Optimization
183
Spike Train SIMilarity Space (SSIMS): A Framework for Single Neuron and Ensemble Data Analysis
185
TensorFlow: Large-Scale Machine
186
Dropout: a simple way to prevent neural networks from overfitting
187
Eine Tragödie. (Faust, A tragedy)
188
Machine learning - a probabilistic perspective
189
The Blind Tricyclist Problem and a Comparative Study of Nonlinear Filters
190
Linear Transformations & theMultivariate Generating Function.
191
Introduction to Random Signals and Applied Kalman Filtering. 4th
192
A chip in your brain can control a robotic arm. Welcome to BrainGate.
193
ApproximateMethods for State-Space Models.
194
AVery Fast LearningMethod for Neural Networks Based on Sensitivity Analysis.
195
Bayesian Population Decoding of Motor Cortical Activity Using a Kalman Filter
196
The Monte-Carlo Method
197
Arouet (Voltaire). Candide, ou l'Optimisme (Candide, or Optimism)
198
Spatiotemporal tuning of motor cortical neurons for hand position and velocity.
199
Sigma-point kalman filters for probabilistic inference in dynamic state-space models
200
Metamorphōseōn librī (Metamorphoses). Penguin
201
Training Feedforward Networks with the Marquardt Algorithm
202
Bayesian filtering: From Kalman filters to particle filters, and beyond.
203
Inferring Hand Motion from Multi-Cell Recordings in Motor Cortex using a Kalman Filter
204
A New Approach to Linear Filtering and Prediction Problems
205
Viscoelastic free surface instabilities during exponential stretching
206
Efficient derivative-free Kalman filters for online learning
207
Following a moving target—Monte Carlo inference for dynamic Bayesian models
208
The Unscented Particle Filter
209
q 2002 American Meteorological Society
210
Mixture Kalman filters
211
Nonlinear Filtering Using Random Particles
212
Global positioning system : theory and applications
213
Master and Margarita. Vintage
214
The validity of posterior expansions based on Laplace''s method
215
Linear Prediction Theory
216
Stochastic Processes and Filtering
217
Application of Kalman filtering to the C-5 guidance and control system.
218
Apollo Navigation, Guidance, and Control Systems: A Progress Report.
219
Case history of the Apollo guidance computer.
220
A square root formulation of the Kalman- Schmidt filter.
221
Smooth regression analysis
222
Nadaraya. “On a regression estimate.
223
New Statistical Formulas.
224
Poor Man's Monte Carlo
225
Menschliches, Allzumenschliches : ein Buch für freie Geister
226
Supplementary Material Technical Report: a High-performance Neural Prosthesis Enabled by Control Algorithm Design
227
But you, when you pray, enter into your inner chamber, and having shut your door, pray to your Father who is in secret, and your Father who sees in secret will reward you openly
228
Applications of Kalman Filtering inAerospace 1960 to the Present.