ALMA: Human Centric Algebraic Machine Learning

Akronym

ALMA

Bidragets beskrivning

Algebraic Machine Learning (AML) has recently been proposed as new learning paradigm that builds upon Abstract Algebra, Model Theory. Unlike other popular learning algorithms, AML is not a statistical method, but it produces generalizing models from semantic embeddings of data into discrete algebraic structures, with the following properties: P1: Is far less sensitive to the statistical characteristics of the training data and does not fit (or even use) parameters P2: Has the potential to seamlessly integrate unstructured and complex information contained in training data, with a formal representation of human knowledge and requirements; P3. Uses internal representations based on discrete sets and graphs, offering a good starting point for generating human understandable, descriptions of what, why and how has been learned P4. Can be implemented in a distributed way that avoids centralized, privacy-invasive collections of large data sets in favor of a collaboration of many local learners at the level of learned partial representations. The aim of the project is to leverage the above properties of AML for a new generation of Interactive, Human-Centric Machine Learning systems., that will: - Reduce bias and prevent discrimination by reducing dependence on statistical properties of training data (P1), integrating human knowledge with constraints (P2), and exploring the how and why of the learning process (P3) - Facilitate trust and reliability by respecting ‘hard’ human-defined constraints in the learning process (P2) and enhancing explainability of the learning process (P3) - Integrate complex ethical constraints into Human-AI systems by going beyond basic bias and discrimination prevention (P2) to interactively shaping the ethics related to the learning process between humans and the AI system (P3) - Facilitate a new distributed, incremental collaborative learning method by going beyond the dominant off-line and centralized data processing approach (P4)
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Startår

2020

Slutår

2025

Beviljade finansiering

ALGEBRAIC AI SL (ES)
717 500 €
Participant
FIWARE FOUNDATION EV (DE)
127 750 €
Participant
FUNDACAO D. ANNA SOMMER CHAMPALIMAUD E DR. CARLOS MONTEZ CHAMPALIMAUD (PT)
698 500 €
Participant
PROYECTOS Y SISTEMAS DE MANTENIMIENTO SL (ES)
731 500 €
Coordinator
INSTITUT NATIONAL DE RECHERCHE ENINFORMATIQUE ET AUTOMATIQUE (FR)
423 000 €
Participant
DEUTSCHES FORSCHUNGSZENTRUM FUR KUNSTLICHE INTELLIGENZ GMBH (DE)
614 500 €
Participant
TECHNISCHE UNIVERSITAT KAISERSLAUTERN (DE)
291 750 €
Participant
UNIVERSIDAD CARLOS III DE MADRID (ES)
196 000 €
Participant

Beviljat belopp

3 996 500 €

Finansiär

Europeiska unionen

Typ av finansiering

Research and Innovation action

Ramprogram

Horizon 2020 Framework Programme

Utlysning

Programdel
EXCELLENT SCIENCE - Future and Emerging Technologies (FET) (5216)
FET Proactive (5218)
Tema
FET Proactive: emerging paradigms and communities (FETPROACT-EIC-05-2019)
Utlysnings ID
H2020-EIC-FETPROACT-2019

Övriga uppgifter

Finansieringsbeslutets nummer

952091

Identifierade teman

artificial intelligence, machine learning