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Jonathan Rebane
Jonathan Rebane
PhD in Data Science, Stockholm University
Dirección de correo verificada de dsv.su.se
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Seq2Seq RNNs and ARIMA models for Cryptocurrency Prediction: A Comparative Study
J Rebane, I Karlsson, S Denic, P Papapetrou
KDD Data Science in Fintech Workshop, 2018
912018
Explainable time series tweaking via irreversible and reversible temporal transformations
I Karlsson, J Rebane, P Papapetrou, A Gionis
2018 IEEE International Conference on Data Mining (ICDM), 207-216, 2018
412018
A classification framework for exploiting sparse multi-variate temporal features with application to adverse drug event detection in medical records
F Bagattini, I Karlsson, J Rebane, P Papapetrou
BMC medical informatics and decision making 19, 1-20, 2019
392019
Locally and globally explainable time series tweaking
I Karlsson, J Rebane, P Papapetrou, A Gionis
Knowledge and Information Systems 62 (5), 1671-1700, 2020
262020
Separate Ca2+ sources are buffered by distinct Ca2+ handling systems in Aplysia neuroendocrine cells
CJ Groten, JT Rebane, G Blohm, NS Magoski
Journal of Neuroscience 33 (15), 6476-6491, 2013
232013
Exploiting complex medical data with interpretable deep learning for adverse drug event prediction
J Rebane, I Samsten, P Papapetrou
Artificial Intelligence in Medicine 109, 101942, 2020
212020
Achieving a data-driven risk assessment methodology for ethical AI
A Felländer, J Rebane, S Larsson, M Wiggberg, F Heintz
Digital Society 1 (2), 13, 2022
142022
An investigation of interpretable deep learning for adverse drug event prediction
J Rebane, I Karlsson, P Papapetrou
2019 IEEE 32nd International Symposium on Computer-Based Medical Systems …, 2019
132019
Humans construct survey estimates on the fly from a compartmentalised representation of the navigated environment
T Meilinger, A Henson, J Rebane, HH Bülthoff, HA Mallot
Spatial Cognition XI: 11th International Conference, Spatial Cognition 2018 …, 2018
102018
SMILE: a feature-based temporal abstraction framework for event-interval sequence classification
J Rebane, I Karlsson, L Bornemann, P Papapetrou
Data mining and knowledge discovery 35 (1), 372-399, 2021
92021
Assessing the clinical validity of attention-based and SHAP temporal explanations for adverse drug event predictions
J Rebane, I Samsten, P Pantelidis, P Papapetrou
2021 IEEE 34th International Symposium on Computer-Based Medical Systems …, 2021
82021
Ca2+ removal by the plasma membrane Ca2+-ATPase influences the contribution of mitochondria to activity-dependent Ca2+ dynamics in Aplysia neuroendocrine cells
CJ Groten, JT Rebane, HM Hodgson, AK Chauhan, G Blohm, NS Magoski
Journal of Neurophysiology 115 (5), 2615-2634, 2016
82016
Mining disproportional frequent arrangements of event intervals for investigating adverse drug events
Z Lee, J Rebane, P Papapetrou
2020 IEEE 33rd International Symposium on Computer-Based Medical Systems …, 2020
42020
Learning from administrative health registries
J Rebane, I Karlsson, L Asker, H Boström, P Papapetrou
ECML-PKDD 1960, 2017
32017
The acquisition of survey knowledge through navigation
T Meilinger, J Rebane, A Henson, HH Buelthoff, HA Mallot
Pabst Science, 2015
12015
Learning from Complex Medical Data Sources
J Rebane
Department of Computer and Systems Sciences, Stockholm University, 2022
2022
Constraints on models of human survey estimation: evidence from a learning study
T Meilinger, J Rebane, A Henson, HH Bülthoff, HA Mallot
International Workshop on Models and Representations in Spatial Cognition, 2016
2016
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