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i6092467/README.md

👋 Hi! My name is Ričards Marcinkevičs. 🎓 Currently, I am a PhD student at the Institute for Machine Learning, Department of Computer Science, ETH Zurich. I am a Medical Data Science group member supervised by Prof. Dr. Julia E. Vogt and co-advised by Prof. Dr. Fanny Yang.

🤖 At the moment, I am broadly interested in interpretable and explainable machine learning. In particular, I would like to understand what are the inductive biases for neural networks that may render the model interpretable in specific use-cases and how such inductive biases may be incorporated into the model? Moreover, how can we leverage interpretations and explanations to obtain actionable insights about the data or the model itself, for instance, to perform scientific discovery or make our models fairer and more robust? From the application perspective, I work on time series and survival analysis and enjoy participating in interdisciplinary projects and leveraging ML methods to analyse biomedical data.

Pinned

  1. semi-supervised-multiview-cbm semi-supervised-multiview-cbm Public

    Concept bottleneck models for multiview data with incomplete concept sets

    Python 6

  2. diff-bias-proxies diff-bias-proxies Public

    Pruning and fine-tuning for debiasing an already-trained neural network with applications to deep chest X-ray classifiers

    Python 4 1

  3. vadesc vadesc Public

    A probabilistic model to cluster survival data in a variational deep clustering setting

    Jupyter Notebook 24 13

  4. GVAR GVAR Public

    An interpretable framework for inferring nonlinear multivariate Granger causality based on self-explaining neural networks.

    Python 58 18

  5. t-cells-response-sars-cov-2 t-cells-response-sars-cov-2 Public

    Code and data for the ML analysis of humoral and cellular responses to SARS-CoV-2

    Jupyter Notebook 1

  6. pediatric-appendicitis-ml pediatric-appendicitis-ml Public

    Using ML to predict the diagnosis, management, and severity of pediatric appendicitis

    R 8 1