REPOSITORY > RESULTS

Browse All

Search Results (1)

Explainable machine learning techniques for applications in life sciences

Author(s): Martin Marzidovšek (Author), Vid Podpečan (Supervisor), Patricija Mozetič (Co-Supervisor)

Year: 2024

Type: Doctoral dissertation

As ecological, agricultural, and biological disciplines face mounting challenges like biodiversity loss, food chain disruption, and climate change, leveraging machine learning (ML) to process complex and heterogeneous data becomes increasingly vital. This dissertation explores the potential of ML in combination with explainability approaches for enhancing research in life sciences, specifically …