We develop generic approaches and specialized techniques that cover a wide range of descriptive, predictive and prescriptive analytics and work effectively with text, image, transactional, graph and time-series data in a responsible manner. E.g. we use Deep Learning methods to develop models for high dimensional heterogeneous, unstructured and evolving data and apply this models to areas such as medical imaging, genomics, anomaly detection and sentiment analysis. We further work on methods for analyzing and explaining the model’s decisions and performance and facilitate effective DM with domain expert in the loop.
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Recent Publications
Our most recent peer reviewed publications
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RT-GCN
Information Fusion (2024) -
Don't Be So Dense
International Journal of Computer Vision (2023) -
An AI-empowered infrastructure for risk prevention during medical examination
Expert Systems with Applications (2023) -
Comparison of neural closure models for discretised PDEs
Computers and Mathematics with Applications (2023) -
Evaluating Quadratic Weighted Kappa as the Standard Performance Metric for Automated Essay Scoring
(2023)