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Dorian Florescu

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A Generalized Approach for Recovering Time Encoded Signals with Finite Rate of Innovation

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Sep 19, 2023
Dorian Florescu

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Unlimited Sampling of Bandpass Signals: Computational Demodulation via Undersampling

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Jul 10, 2023
Gal Shtendel, Dorian Florescu, Ayush Bhandari

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Multi-Dimensional Unlimited Sampling and Robust Reconstruction

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Sep 14, 2022
Dorian Florescu, Ayush Bhandari

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Time Encoding via Unlimited Sampling: Theory, Algorithms and Hardware Validation

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Aug 22, 2022
Dorian Florescu, Ayush Bhandari

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The Surprising Benefits of Hysteresis in Unlimited Sampling: Theory, Algorithms and Experiments

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Nov 24, 2021
Dorian Florescu, Felix Krahmer, Ayush Bhandari

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A machine learning based software pipeline to pick the variable ordering for algorithms with polynomial inputs

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May 22, 2020
Dorian Florescu, Matthew England

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Improved cross-validation for classifiers that make algorithmic choices to minimise runtime without compromising output correctness

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Nov 28, 2019
Dorian Florescu, Matthew England

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Comparing machine learning models to choose the variable ordering for cylindrical algebraic decomposition

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Jun 05, 2019
Matthew England, Dorian Florescu

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