Deep Reinforcement Learning using Symbolic Representation for Performing Spoken Language Instructions
2nd Workshop on Behavior Adaptation, Interaction and Learning for Assistive Robotics (BAILAR) on Robot and Human Interactive Communication (RO-MAN), 26th IEEE International Symposium on,
- Aug 2017
Spoken language is one of the most efficient ways
to instruct robots about performing domestic tasks. However,
the state of the environment has to be considered to plan and
execute the actions successfully. We propose a system which
can learn to recognise the users intention and map it to a
goal for a reinforcement learning (RL) system. This system is
then used to generate a sequence of actions toward this goal
considering the state of the environment. The novelty is the
use of symbolic representations for both input and output of a
neural Deep Q-network which enables it to be used in a hybrid
system. To show the effectiveness of our approach, the Tell Me
Dave corpus is used to train the intention detection model and
in a second step to train the RL module towards the detected
objective, represented by a set of state predicates. We show
that the system can successfully recognise command sequences
from this corpus as well as train the deep-RL network with
symbolic input. We further show that the performance can be
significantly increased by exploiting the symbolic representation
to generate intermediate rewards.
@InProceedings{ZMWW17, author = {Zamani, Mohammad Ali and Magg, Sven and Weber, Cornelius and Wermter, Stefan}, title = {Deep Reinforcement Learning using Symbolic Representation for Performing Spoken Language Instructions}, booktitle = {2nd Workshop on Behavior Adaptation, Interaction and Learning for Assistive Robotics (BAILAR) on Robot and Human Interactive Communication (RO-MAN), 26th IEEE International Symposium on}, editors = {}, number = {}, volume = {}, pages = {}, year = {2017}, month = {Aug}, publisher = {}, doi = {}, }