2019
DOI: 10.1109/access.2019.2934149
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Multi-Turn Response Selection for Chatbots With Hierarchical Aggregation Network of Multi-Representation

Abstract: Matching an appropriate response with its multi-turn context is a crucial challenge in retrievalbased chatbots. Current studies construct multiple representations of context and response to facilitate response selection, but they use these representations in isolation and ignore the relationships among representations. To address these problems, we propose a hierarchical aggregation network of multirepresentation (HAMR) to leverage abundant representations sufficiently and enhance valuable information. First, … Show more

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Cited by 12 publications
(7 citation statements)
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“…The framework considers the relationships between previous utterances and candidate responses and selects the optimal responses for the context. Mao et al (2019) also designed hierarchical aggregation network of multi‐representation based on bidirectional RNNs to match the information in context to alternative responses. The MILABOT developed by Serban et al (2018) adopted deep RL to select the most appropriate responses after considering the context.…”
Section: A Critical Analysis Of Various Computational Approaches Used To Develop Chatbotsmentioning
confidence: 99%
“…The framework considers the relationships between previous utterances and candidate responses and selects the optimal responses for the context. Mao et al (2019) also designed hierarchical aggregation network of multi‐representation based on bidirectional RNNs to match the information in context to alternative responses. The MILABOT developed by Serban et al (2018) adopted deep RL to select the most appropriate responses after considering the context.…”
Section: A Critical Analysis Of Various Computational Approaches Used To Develop Chatbotsmentioning
confidence: 99%
“…Differently, [6] utilizes user model and communication resources in developing a deep reinforcement learning network for a large financial corporation to enhance its customers experience. The main disadvantages of using AI-based systems [1,7,9] are long training and validation processes and requiring high performance computing cluster. In addition, for languages like Vietnamese, there are many ways to construct a question and a question can be understood based on conversational context, thus, identifying if a sentence is a question is always a challenging task.…”
Section: Figure 1 Banking T'aiomentioning
confidence: 99%
“…In recent years, the emergence of chatbot [1,3,5,7,15] and voicebot [11,14] systems has created a strong demand for text analysis for promptly and accurately responding to customers' inquiries. The analysis helps the bot systems to better understand a given context represented by either text or voice.…”
Section: Introductionmentioning
confidence: 99%
“…In Ref. [ 6 ], bidirectional recurrent neural network (BiRNN) technology was used as the basis for a chatbot, and a GRU [ 7 ] was used as the core of the technology. The system architecture was exceedingly large and required substantial computing resources, but was verified favorably in experiments.…”
Section: Introductionmentioning
confidence: 99%