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Peter Tino

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School of Computer Science, University of Birmingham, the United Kingdom

Interpretable Models Capable of Handling Systematic Missingness in Imbalanced Classes and Heterogeneous Datasets

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Jun 04, 2022
Sreejita Ghosh, Elizabeth S. Baranowski, Michael Biehl, Wiebke Arlt, Peter Tino, Kerstin Bunte

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Probabilistic Learning Vector Quantization on Manifold of Symmetric Positive Definite Matrices

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Feb 01, 2021
Fengzhen Tang, Haifeng Feng, Peter Tino, Bailu Si, Daxiong Ji

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LAAT: Locally Aligned Ant Technique for detecting manifolds of varying density

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Sep 17, 2020
Abolfazl Taghribi, Kerstin Bunte, Rory Smith, Jihye Shin, Michele Mastropietro, Reynier F. Peletier, Peter Tino

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Visualisation and knowledge discovery from interpretable models

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May 08, 2020
Sreejita Ghosh, Peter Tino, Kerstin Bunte

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Input representation in recurrent neural networks dynamics

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Mar 24, 2020
Pietro Verzelli, Cesare Alippi, Lorenzo Livi, Peter Tino

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Feature Relevance Determination for Ordinal Regression in the Context of Feature Redundancies and Privileged Information

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Dec 10, 2019
Lukas Pfannschmidt, Jonathan Jakob, Fabian Hinder, Michael Biehl, Peter Tino, Barbara Hammer

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Dynamical Systems as Temporal Feature Spaces

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Jul 15, 2019
Peter Tino

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Exploiting Synthetically Generated Data with Semi-Supervised Learning for Small and Imbalanced Datasets

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Mar 24, 2019
Maria Perez-Ortiz, Peter Tino, Rafal Mantiuk, Cesar Hervas-Martinez

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A mixture of experts model for predicting persistent weather patterns

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Mar 24, 2019
Maria Perez-Ortiz, Pedro A. Gutierrez, Peter Tino, Carlos Casanova-Mateo, Sancho Salcedo-Sanz

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