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Thomas Guyet

6
Documents
Identifiants chercheurs

Présentation

Research interests ------------------ My research area is artificial intelligence (AI) with a multidisciplinary approach - algorithmic, design methodologies and cognitive science. I am particularly interested in discovering spatial and temporal patterns in semantically rich datasets. My areas of application are related to agronomy (mainly landscapes) and health (care pathways analysis). My first research direction is the **temporal and spatial pattern mining**. Data from the observation of living systems (agricultural and medical systems) have a strong spatial or temporal dimension. But the spatial and temporal information is often underutilized in the data mining algorithms. The challenge lies in identifying new kind of temporal/spatial patterns that have valuable properties to make possible their extraction by complete and correct algorithms. A recent approach I'm developping is the use declarative programming, more especially **[Answer Set Programming (ASP)](https://www.cs.utexas.edu/users/vl/papers/wiasp.pdf)** with [clingo](https://potassco.org), to mix pattern mining and reasonning. My second research direction aims at better including the user in the loop of knowledge discovery. Specifically, I am interested in implementing **interactive systems to support users in their exploration process** of large datasets. To acheive this goal I propose an enactive point of view of the data interpretation that brings creative solutions to take into account the cognitive ergonomy of the knowledge discovery tools.

Publications

alexandre-termier
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XPM: An explainable-by-design pattern-based estrus detection approach to improve resource use in dairy farms

Issei Harada , Kevin Fauvel , Thomas Guyet , Véronique Masson , Alexandre Termier
AAAI 2022 - 36th AAAI Conference on Artificial Intelligence, Feb 2022, Vancouver, Canada. pp.1-10
Communication dans un congrès hal-03483109v2
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VCNet: A self-explaining model for realistic counterfactual generation

Victor Guyomard , Françoise Fessant , Thomas Guyet , Tassadit Bouadi , Alexandre Termier
ECML PKDD 2022 - European Conference on Machine Learning and Knowledge Discovery in Databases., Sep 2022, Grenoble, France. pp.1-16
Communication dans un congrès hal-03899151v1
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Probabilistic forecasting of seasonal time series Combining clustering and classification for forecasting

Colin Leverger , Thomas Guyet , Simon Malinowski , Vincent Lemaire , Alexis Bondu
ITISE 2021 - 7th International Conference on Time Series and Forecasting, Jul 2021, Gran Canaria, Spain. pp.1-13
Communication dans un congrès hal-03326626v1
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Toward a Framework for Seasonal Time Series Forecasting Using Clustering

Colin Leverger , Simon Malinowski , Thomas Guyet , Vincent Lemaire , Alexis Bondu
IDEAL 2019, Nov 2019, Manchester, United Kingdom. pp.328-340, ⟨10.1007/978-3-030-33607-3_36⟩
Communication dans un congrès hal-02371221v1
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Purchase Signatures of Retail Customers

Clément Gautrais , René Quiniou , Peggy Cellier , Thomas Guyet , Alexandre Termier
PAKDD 2017 - The Pacific-Asia Conference on Knowledge Discovery and Data Mining, May 2017, Jeju, South Korea
Communication dans un congrès hal-01639795v1