Get our free extension to see links to code for papers anywhere online!Free add-on: code for papers everywhere!Free add-on: See code for papers anywhere!
Abstract:This paper discusses lexicon word learning in high-dimensional meaning spaces from the viewpoint of referential uncertainty. We investigate various state-of-the-art Machine Learning algorithms and discuss the impact of scaling, representation and meaning space structure. We demonstrate that current Machine Learning techniques successfully deal with high-dimensional meaning spaces. In particular, we show that exponentially increasing dimensions linearly impact learner performance and that referential uncertainty from word sensitivity has no impact.
* Published as Spranger, M. and Beuls, K. (2016). Referential
uncertainty and word learning in high-dimensional, continuous meaning spaces.
In Hafner, V. and Pitti, A., editors, Development and Learning and Epigenetic
Robotics (ICDL-Epirob), 2016 Joint IEEE International Conferences on, 2016.
IEEE