THRIVE - Techniques for Holistic, Responsible, and Interpretable Virtual Education
Bidragets beskrivning
Artificial intelligence and machine learning models in education have shown exceptional performance and promise more accessible and personalized education. However, actual applications of these models remain rare as the best-performing models are usually the least explainable. Opaque models not only contain the risk of algorithms or automated decision-making systems making decisions that unfairly disadvantage certain groups of students, but they also prevent educational stakeholders from understanding the decisions. Thus, explainability plays a pivotal role in ensuring the right features are used and for detecting algorithmic discrimination. The THRIVE project aims to address the explainability issue by jointly considering (i) the representation and abstraction of data, (ii) the identification of “right” features with causality, (iii) the architecture of educational models, and (iv) model-usefulness established by the educational domain experts.
Visa merStartår
2023
Slutår
2027
Beviljade finansiering
Finansiär
Finlands Akademi
Typ av finansiering
Akademiforskare
Utlysning
Övriga uppgifter
Finansieringsbeslutets nummer
356314
Vetenskapsområden
El-, automations- och telekommunikationsteknik, elektronik
Forskningsområden
Automaatio- ja systeemitekniikka
Identifierade teman
artificial intelligence, machine learning