EEG reveals information essential to users
In a study conducted by the Helsinki Institute for Information Technology (HIIT) and the Centre of Excellence in Computational Inference (COIN), laboratory test subjects read the introductions of Wikipedia articles of their own choice. During the reading session, the test subjects鈥 EEG was recorded, and the readings were then used to model which key words the subjects found interesting.
鈥楾he aim was to study if EEG can be used to identify the words relevant to a test subject, to predict a subject's search intentions and to use this information to recommend new relevant and interesting documents to the subject. There are millions of documents in the English Wikipedia, so the recommendation accuracy was studied against this vast but controllable corpus鈥, says HIIT researcher Tuukka Ruotsalo.
Due to the noise in brain signals, machine learning was used for modelling, so that relevance and interest could be identified by learning the EEG responses. With the help of machine learning methods, it was possible to identify informative words, so they were also useful in the information retrieval application.
鈥業nformation overload is a part of everyday life, and it is impossible to react to all the information we see. And according to this study, we don鈥檛 need to; EEG responses measured from brain signals can be used to predict a user鈥檚 reactions and intent', tells HIIT researcher Manuel Eugster.
Based on the study, brain signals could be used to successfully predict other Wikipedia content that would interest the user.
鈥楢pplying the method in real information retrieval situations seems promising based on the research findings. Nowadays, we use a lot of our working time searching for information, and there is much room in making knowledge work more effective, but practical applications still need more work. The main goal of this study was to show that this kind of new thing was possible in the first place鈥, tells Professor at the Department of Computer Science and Director of COIN Samuel Kaski.
鈥業t is possible that, in the future, EEG sensors can be worn comfortably. This way, machines could assist humans by automatically observing, marking and gathering relevant information by monitoring EEG responses鈥, adds Ruotsalo.
The study was carried out in cooperation by the Helsinki Institute for Information Technology (HIIT), which is jointly run by Aalto University and the University of Helsinki, and the Centre of Excellence in Computational Inference (COIN). The study has been funded by the EU, the Academy of Finland as a part of the COIN study on machine learning and advanced interfaces, and the Revolution of Knowledge Work project by Tekes.
See the video:
Further information:
Researcher Tuukka Ruotsalo
Aalto University, University of Helsinki, HIIT
+358 50 566 1400
tuukka.ruotsalo@aalto.fi
Professor Samuel Kaski
Aalto University
+358 50 305 8694
samuel.kaski@aalto.fi
Read more news
The exhibition "Our land, for all" explores personal and national identity
The 20th anniversary exhibition of the Association of Finnish Fine Arts Foundations, opened at Kunsthalle Helsinki, asks: whose stories is Finland built from? The exhibition has been curated by PhD, docent Annamari V盲nsk盲.
Decoding the chemistry of space with machine learning
Astronomers can detect complex chemical fingerprints聽in stardust聽鈥 but many of them remain unidentified. The聽SpaceML聽project combines machine learning and computational chemistry to simulate how molecules form and evolve in space, helping researchers decode these signals.
Master鈥檚 Thesis Demonstrates Sustainable Textile Printing with Biocolours
Lotta presented the results on 鈥淭extile Printing with Biocolours from Lingonberry and Roseroot鈥