ÄûÃʵ¼º½

News

Silja Sormunen and Erik Härkönen received the prestigious School of Science Master’s Thesis Awards

Only about 1% of Aalto School of Science graduates received such an award
Detail from main facade of Computer Science building / Yksityiskohta Tietotekniikan talon julkisivusta / phoÄûÃʵ¼º½ University, Matti Ahlgren
Two students from the Department of Computer Science received Master's Thesis Awards 2020. Photo: Matti Ahlgren / Aalto University

In February, the Aalto University School of Science presented the 2020 Master’s Thesis Awards. About 400 students graduated from the School of Science with a master’s degree, and only about one percent of them were awarded the prize.

Of the four winners, two are from the Department of Computer Science, Silja Sormunen and Erik Härkönen.

The title of Silja Sormunen's thesis is ‘Distinguishing subsampled power laws from other heavytailed distributions.’ Her thesis was supervised by Professor Jari Saramäki.

Power law distributions have frequently been observed in both natural and artificial systems, and they play a prominent role in network science. However, distinguishing power law distributions from other heavy-tailed distributions is not straight-forward, and this task is further complicated if the data is subsampled.

'In this work, we analysed how well two commonly used methods for detecting power law distributions succeed in distinguishing subsampled power laws from other heavy-tailed distributions. The thesis showed that classifying the distribution’s type correctly is challenging, but that subsampling affects the two methods’ performance differently – in fact, one of the methods can in some cases perform better on subsampled data than on the original distribution,' Sormunen explains.

Sormunen is a doctoral track student who started working on her doctoral dissertation already at the beginning of her master's studies. Read more about the doctoral track here.

The title of Erik Härkönen's master's thesis is ‘Unsupervised Discovery of Interpretable GAN Controls.’ His work was supervised by Professor Jaakko Lehtinen. The work deals with the control of data-based generative GAN machine learning models in ways that are understandable and interpretable for humans. In their basic form, GAN models are so-called black boxes, the interpretable control of which requires significant effort.

'We found out that the models can be analyzed and controlled in a simpler way than previous methods, utilizing PCA, which is a basic method of statistical analysis. Due to its unsupervised nature, the presented method also makes it possible to find completely new, previously unknown interpretable control methods,' says Härkönen.

The research work that was done for the thesis was conducted in part at Adobe Research in Cambridge, Massachusetts. The research article written about it was approved to the world’s largest and most important machine learning conference, NeurIPS, in 2020.

Read more

PML Research Group in Department of Computer Science

Doctoral track combines Master’s and doctoral studies

Top students selected to the doctoral track can have their studies tailored towards pursuing a doctoral degree and start working in the department’s research groups already during their Master’s studies.

Department of Computer Science
Silja Sormunen standing on a forest path in Otaniemi

'Mathematics is a bridge between different disciplines'

Psychology, medicine and philosophy are some of the subjects that Silja Sormunen has studied. That is why Complex Systems, part of Life Science Technologies programme, felt like just the thing she had been looking for. She is also in the Doctoral Track programme.

News
  • Updated:
  • Published:
Share
URL copied!

Read more news

A collage of nine people in formal and casual attire. Backgrounds vary from office settings to plain walls.
Research & Art Published:

Research Council of Finland establishes a Center of Excellence in Quantum Materials

The Centre, called QMAT, creates new materials to power the quantum technology of coming decades.
arotor adjustable stiffness test setup
Cooperation, Research & Art Published:

Major funding powers development of next-generation machine technology aimed at productivity leap in export sectors

The BEST research project is developing new types of sealing, bearing, and damping technology.
Unite! Seed Fund 2026: Call opens on 20 January. Applications open for student activities, teaching and learning, research and PhD.
Cooperation, Research & Art, Studies, University Published:

Unite! Seed Fund 2026: Call opens on 20 January 2026

Gain an early overview of the Unite! Seed Fund Call of Spring 2026. The call includes three funding lines: Student Activities, Teaching and Learning, and Research and PhD.
Deepika Yadav in the Computer science building in Otaniemi. Photo: Matti Ahlgren.
Appointments Published:

Deepika Yadav leverages technology to improve women's health

Deepika Yadav recently began as an assistant professor at the Department of Computer Science in the field of human-computer interaction (HCI) and interaction design for health and wellbeing.