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Join us for a seminar on Aerial+, a novel Association Rule Mining method for uncovering clear, interpretable patterns in complex, high-dimensional data. This talk will show how Aerial+ scales across domains, integrates prior knowledge, and makes powerful pattern discovery accessible to all researchers with just a few lines of Python.
Event details of Data Science seminar: Scalable Knowledge Discovery from Tabular Data
Date
11 November 2025
Time
13:00 -14:00
Room
L1.10, Lab42

About the seminar

Discovering patterns from data in human-understandable forms is a valuable task for both knowledge discovery and interpretable inference. A prominent method is Association Rule Mining (ARM), which identifies patterns in the form of logical rules describing relationships between data attributes. For example, in a table of patient records, ARM might reveal that high values in one column (e.g., white blood cell count) often co-occur with particular entries in another column (e.g., infection status). Popular ARM methods, however, rely on algorithmic or optimization-based solutions that struggle to scale to high-dimensional datasets (i.e., tables with many columns) without effective search space reduction.

This talk introduces Aerial+, a novel ARM method that leverages neural networks’ ability to handle high-dimensional data to learn a concise set of prominent patterns from tabular datasets. Aerial+ has been evaluated on both digital twin datasets (sensor data enriched with semantics) and on generic tabular datasets, demonstrating its versatility across domains.

In addition, Aerial+ can incorporate prior knowledge to enhance discovery: either from knowledge graphs (structured semantic information about a domain) or from tabular foundation models, large pre-trained neural networks that capture table semantics and support diverse downstream tasks.

Finally, Aerial+ is accessible to researchers from any field via a simple Python interface that runs in just two lines of code. The talk will cover both the foundations of ARM and a hands-on tutorial with Aerial+.

Registration

The seminar is free and everyone from all disciplines and faculties is welcome to attend.  Register now to secure your place!

 

About the speaker

Erkan Karabulut is a doctoral researcher at INDElab, University of Amsterdam, advised by Dr. Victoria Degeler and Prof. Dr. Paul Groth. His research focuses on interpretable decision-making through Neurosymbolic knowledge discovery and inference, applied to Digital Twins and tabular datasets.

Erkan holds an MSc in Computer Science from TU Munich and a BSc in Computer Engineering from Yildiz Technical University, Istanbul. Previously, he was a research assistant at fortiss and worked as a software engineer and consultant.

E. (Erkan) Karabulut MSc

Faculty of Science

Informatics Institute

LAB42 - Science Park 900

Room L1.10, Lab42
Science Park 900
1098 XH Amsterdam