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MDKB-Bot: A Practical Framework for Multi-Domain Task-Oriented Dialogue System
Author(s) -
Yadi Lao,
Weijie Liu,
Sheng Gao,
Si Li
Publication year - 2019
Publication title -
data intelligence
Language(s) - English
Resource type - Journals
eISSN - 2096-7004
pISSN - 2641-435X
DOI - 10.1162/dint_a_00010
Subject(s) - computer science , task (project management) , domain (mathematical analysis) , set (abstract data type) , natural language understanding , state (computer science) , transition (genetics) , artificial neural network , artificial intelligence , simple (philosophy) , human–computer interaction , natural language , engineering , programming language , mathematical analysis , biochemistry , chemistry , philosophy , mathematics , systems engineering , epistemology , gene
One of the major challenges to build a task-oriented dialogue system is that dialogue state transition frequently happens between multiple domains such as booking hotels or restaurants. Recently, the encoderdecoder model based on the end-to-end neural network has become an attractive approach to meet this challenge. However, it usually requires a sufficiently large amount of training data and it is not flexible to handle dialogue state transition. This paper addresses these problems by proposing a simple but practical framework called Multi-Domain KB-BOT (MDKB-BOT), which leverages both neural networks and rule-based strategy in natural language understanding (NLU) and dialogue management (DM). Experiments on the data set of the Chinese Human-Computer Dialogue Technology Evaluation Campaign show that MDKB-BOT achieves competitive performance on several evaluation metrics, including task completion rate and user satisfaction.

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