Machine Learning for 
Interactive Systems (MLIS)

Intelligent systems or robots that interact with their environment by perceiving, acting or communicating often face a challenge in how to bring these different concepts together. One of the main reasons for this challenge is the fact that the core concepts in perception, action and communication are typically studied by different communities: the computer vision, robotics and natural language processing communities, among others, without much interchange between them.

Learning systems that encompass perception, action and communication in a unified and principled way are still rare. As machine learning lies at the core of these communities, it can act as a unifying factor in bringing the communities closer together. Unifying these communities is highly important for understanding how state-of-the-art approaches from different disciplines can be combined (and applied) to form generally interactive intelligent systems. This is important for many applications in robotics, human-robot interaction and intelligent interfaces.

This workshop aims to bring researchers from multiple disciplines together that are in some way or another affected by the gap between perception, action and communication. We hope to provide a forum for interdisciplinary discussion that allows researchers to look at their work from new perspectives that go beyond their core community and potentially develop new interdisciplinary collaborations.

Previous proceedings of MLIS can be found for MLIS-2012 in Montpellier (co-located with ECAI) and for MLIS-2013 in Beijing, co-located with IJCAI.

Welcome to MLIS-2014:


June 27th: Full programme is online now!

May 22nd: MLIS-2014 will take place on the 28th of July. Looking forward to seeing you in Quebec City!

See our programme for the list of accepted papers.

April 4th: Papers are due on the 10th of April:

January 9th: First Call for Papers.

January 7th: MLIS-2014 will be collocated with AAAI in Quebéc City, Canada, 27-28 of July.

3rd Workshop on Machine Learning for Interactive Systems (MLIS-2014):

Bridging the Gap Between Perception, Action and Communication

co-located with AAAI-2014, Quebéc City, Canada