Recurrent Neural Network Sentence Parser for Multiple Languages with Flexible Meaning Representations for Home Scenarios
IROS Workshop on Bio-inspired Social Robot Learning in Home Scenarios,
- Dec 2016
We present a Recurrent Neural Network (RNN),
namely an Echo State Network (ESN), that performs sentence
comprehension and can be used for Human-Robot Interaction
(HRI). The RNN is trained to map sentence structures to
meanings (i.e. predicates). We have previously shown that this
ESN is able to generalize to unknown sentence structures in
English and French. The flexibility of the predicates it can learn
to produce enables one to use the model to explore language
acquisition in a developmental approach. This RNN has been
encapsulated in a ROS module which enables one to use it
in a cognitive robotic architecture. Here, for the first time, we
show that it can be trained to learn to parse sentences related to
home scenarios with higly flexible predicate representations and
variable sentence structures. Moreover we apply it to various
languages, including some languages that were never tried
with the architecture before, namely German and Spanish. We
conclude that the representations are not limited to predicates,
other type of representations can be used.
@InProceedings{HT16, author = {Hinaut, Xavier and Twiefel, Johannes}, title = {Recurrent Neural Network Sentence Parser for Multiple Languages with Flexible Meaning Representations for Home Scenarios}, booktitle = {IROS Workshop on Bio-inspired Social Robot Learning in Home Scenarios}, editors = {}, number = {}, volume = {}, pages = {}, year = {2016}, month = {Dec}, publisher = {}, doi = {}, }