Why Guided Dialog Policy Learning performs well? Understanding the role of adversarial learning and its alternative

07/13/2023
by   Sho Shimoyama, et al.
0

Dialog policies, which determine a system's action based on the current state at each dialog turn, are crucial to the success of the dialog. In recent years, reinforcement learning (RL) has emerged as a promising option for dialog policy learning (DPL). In RL-based DPL, dialog policies are updated according to rewards. The manual construction of fine-grained rewards, such as state-action-based ones, to effectively guide the dialog policy is challenging in multi-domain task-oriented dialog scenarios with numerous state-action pair combinations. One way to estimate rewards from collected data is to train the reward estimator and dialog policy simultaneously using adversarial learning (AL). Although this method has demonstrated superior performance experimentally, it is fraught with the inherent problems of AL, such as mode collapse. This paper first identifies the role of AL in DPL through detailed analyses of the objective functions of dialog policy and reward estimator. Next, based on these analyses, we propose a method that eliminates AL from reward estimation and DPL while retaining its advantages. We evaluate our method using MultiWOZ, a multi-domain task-oriented dialog corpus.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/30/2018

Adversarial Learning of Task-Oriented Neural Dialog Models

In this work, we propose an adversarial learning method for reward estim...
research
04/10/2021

Imperfect also Deserves Reward: Multi-Level and Sequential Reward Modeling for Better Dialog Management

For task-oriented dialog systems, training a Reinforcement Learning (RL)...
research
05/31/2020

Variational Reward Estimator Bottleneck: Learning Robust Reward Estimator for Multi-Domain Task-Oriented Dialog

Despite its notable success in adversarial learning approaches to multi-...
research
04/07/2020

Guided Dialog Policy Learning without Adversarial Learning in the Loop

Reinforcement-based training methods have emerged as the most popular ch...
research
04/23/2020

Learning Dialog Policies from Weak Demonstrations

Deep reinforcement learning is a promising approach to training a dialog...
research
07/01/2022

Reinforcement Learning of Multi-Domain Dialog Policies Via Action Embeddings

Learning task-oriented dialog policies via reinforcement learning typica...
research
11/02/2021

Integrating Pretrained Language Model for Dialogue Policy Learning

Reinforcement Learning (RL) has been witnessed its potential for trainin...

Please sign up or login with your details

Forgot password? Click here to reset