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Andreas Lindholm (Svensson)
Andreas Lindholm (Svensson)
Machine Learning Research Engineer, Annotell
Verified email at annotell.com
Title
Cited by
Cited by
Year
Probabilistic forecasting of electricity consumption, photovoltaic power generation and net demand of an individual building using Gaussian Processes
DW Van der Meer, M Shepero, A Svensson, J Widén, J Munkhammar
Applied energy 213, 195-207, 2018
1012018
A flexible state space model for learning nonlinear dynamical systems
A Svensson, TB Schön
Automatica 80, 189-199, 2016
842016
Sequential Monte Carlo Methods for System Identification
TB Schön, F Lindsten, J Dahlin, J Wågberg, CA Naesseth, A Svensson, ...
17th IFAC Symposium on System Identification, 975-980, 2015
792015
Computationally efficient Bayesian learning of Gaussian process state space models
A Svensson, A Solin, S Särkkä, TB Schön
19th International Conference on Artificial Intelligence and Statistics …, 2016
442016
Probabilistic learning of nonlinear dynamical systems using sequential Monte Carlo
TB Schön, A Svensson, L Murray, F Lindsten
Mechanical systems and signal processing 104, 866-883, 2018
302018
Machine Learning: A First Course for Engineers and Scientists
A Lindholm, N Wahlström, F Lindsten, TB Schön
Cambridge University Press, 2022
232022
Identification of jump Markov linear models using particle filters
A Svensson, TB Schön, F Lindsten
IEEE 53rd Annual Conference on Decision and Control (CDC) (Los Angeles, CA …, 2014
222014
Marginalizing Gaussian process hyperparameters using sequential Monte Carlo
A Svensson, J Dahlin, TB Schön
2015 IEEE 6th International Workshop on Computational Advances in Multi …, 2015
152015
Nonlinear state space smoothing using the conditional particle filter
A Svensson, TB Schön, M Kok
17th IFAC Symposium on System Identification, 2015
142015
Supervised machine learning
A Lindholm, N Wahlström, F Lindsten, TB Schön
Department of Information Technology, Uppsala University: Uppsala, Sweden, 112, 2019
132019
Learning of state-space models with highly informative observations: A tempered sequential Monte Carlo solution
A Svensson, TB Schön, F Lindsten
Mechanical systems and signal processing 104, 915-928, 2018
132018
Probabilistic modeling–linear regression & Gaussian processes
F Lindsten, TB Schön, A Svensson, N Wahlström
Uppsala: Uppsala University 7, 2017
112017
Data consistency approach to model validation
A Lindholm, D Zachariah, P Stoica, TB Schön
IEEE Access 7, 59788-59796, 2019
82019
Supervised Machine Learning. Lecture notes for the Statistical Machine Learning course
A Lindholm, N Wahlström, F Lindsten, TB Schön
Department of Information Technology, Uppsala University, Sweden, 2019
62019
Particle Filter Explained without Equations
A Svensson
Oct, 2013
62013
Identification of a Duffing oscillator using particle Gibbs with ancestor sampling
TJ Rogers, TB Schön, A Lindholm, K Worden, EJ Cross
Journal of Physics: Conference Series 1264 (1), 012051, 2019
52019
Learning dynamical systems with particle stochastic approximation em
A Lindholm, F Lindsten
arXiv preprint arXiv:1806.09548, 2018
5*2018
Statistical machine learning
F Lindsten, N Wahlström, A Svensson, TB Schön
Lecture note. Department of Information Technology, Uppsala University. url …, 2018
42018
Learning nonlinear state-space models using smooth particle-filter-based likelihood approximations
A Svensson, F Lindsten, TB Schön
IFAC-PapersOnLine 51 (15), 652-657, 2018
42018
Comparing two recent particle filter implementations of Bayesian system identification
A Svensson, TB Schön
Technical Report 2016, 2016
42016
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