Incorporating Joint Embeddings into Goal-Oriented Dialogues with
Multi-Task Learning
- URL: http://arxiv.org/abs/2001.10468v1
- Date: Tue, 28 Jan 2020 17:15:02 GMT
- Title: Incorporating Joint Embeddings into Goal-Oriented Dialogues with
Multi-Task Learning
- Authors: Firas Kassawat, Debanjan Chaudhuri, Jens Lehmann
- Abstract summary: We propose an RNN-based end-to-end encoder-decoder architecture which is trained with joint embeddings of the knowledge graph and the corpus as input.
The model provides an additional integration of user intent along with text generation, trained with a multi-task learning paradigm.
- Score: 8.662586355051014
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Attention-based encoder-decoder neural network models have recently shown
promising results in goal-oriented dialogue systems. However, these models
struggle to reason over and incorporate state-full knowledge while preserving
their end-to-end text generation functionality. Since such models can greatly
benefit from user intent and knowledge graph integration, in this paper we
propose an RNN-based end-to-end encoder-decoder architecture which is trained
with joint embeddings of the knowledge graph and the corpus as input. The model
provides an additional integration of user intent along with text generation,
trained with a multi-task learning paradigm along with an additional
regularization technique to penalize generating the wrong entity as output. The
model further incorporates a Knowledge Graph entity lookup during inference to
guarantee the generated output is state-full based on the local knowledge graph
provided. We finally evaluated the model using the BLEU score, empirical
evaluation depicts that our proposed architecture can aid in the betterment of
task-oriented dialogue system`s performance.
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