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arxiv: 1711.11023 · v2 · pith:PVJK624Cnew · submitted 2017-11-29 · 📊 stat.ML · cs.CL· cs.NE

A Benchmarking Environment for Reinforcement Learning Based Task Oriented Dialogue Management

classification 📊 stat.ML cs.CLcs.NE
keywords dialogueenvironmentslearningmodelsreinforcementalgorithmsbenchmarkingdifferent
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Dialogue assistants are rapidly becoming an indispensable daily aid. To avoid the significant effort needed to hand-craft the required dialogue flow, the Dialogue Management (DM) module can be cast as a continuous Markov Decision Process (MDP) and trained through Reinforcement Learning (RL). Several RL models have been investigated over recent years. However, the lack of a common benchmarking framework makes it difficult to perform a fair comparison between different models and their capability to generalise to different environments. Therefore, this paper proposes a set of challenging simulated environments for dialogue model development and evaluation. To provide some baselines, we investigate a number of representative parametric algorithms, namely deep reinforcement learning algorithms - DQN, A2C and Natural Actor-Critic and compare them to a non-parametric model, GP-SARSA. Both the environments and policy models are implemented using the publicly available PyDial toolkit and released on-line, in order to establish a testbed framework for further experiments and to facilitate experimental reproducibility.

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