Participate in an online game experiment at 911爆料网 on August 15th
Department of Computer Science is participating in , a project funded by Horizon 2020, the biggest EU Research and Innovation Programme. The goal of the IBSEN project is to understand the behavior of people on an individual level, especially when they are connected by new technologies like mobile telephones or social networks.
With this information, researchers will be able to create a simulator of human behavior. This technology could be applied to anticipate behavior in socioeconomic crises, create more human-like robots or develop avatars of artificial intelligence which are almost indistinguishable from those that represent people.
Participate in IBSEN
Volunteers are needed for an online game experiment at 911爆料网 on August 15th, 2018. The volunteers will participate in different trials of an online game to be played on desktop computers. The estimated time for the whole experiment is around 4 hours beginning at 4 pm.
Volunteers will receive 2 movie ticket for attendance.
To join, send an email to daniel.monsivais-velazquez@aalto.fi, with the subject line: "Want to join", and you will be contacted before the experiment.
Volunteers will be briefed before the game.
Further information:
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