Requirements Elicitation in Cognitive Service for Recommendation

03/29/2022
by   Bolin Zhang, et al.
0

Nowadays, cognitive service provides more interactive way to understand users' requirements via human-machine conversation. In other words, it has to capture users' requirements from their utterance and respond them with the relevant and suitable service resources. To this end, two phases must be applied: I.Sequence planning and Real-time detection of user requirement, II.Service resource selection and Response generation. The existing works ignore the potential connection between these two phases. To model their connection, Two-Phase Requirement Elicitation Method is proposed. For the phase I, this paper proposes a user requirement elicitation framework (URef) to plan a potential requirement sequence grounded on user profile and personal knowledge base before the conversation. In addition, it can also predict user's true requirement and judge whether the requirement is completed based on the user's utterance during the conversation. For the phase II, this paper proposes a response generation model based on attention, SaRSNet. It can select the appropriate resource (i.e. knowledge triple) in line with the requirement predicted by URef, and then generates a suitable response for recommendation. The experimental results on the open dataset DuRecDial have been significantly improved compared to the baseline, which proves the effectiveness of the proposed methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/03/2020

User Intention Recognition and Requirement Elicitation Method for Conversational AI Services

In recent years, chat-bot has become a new type of intelligent terminal ...
research
01/07/2023

A Personalized Utterance Style (PUS) based Dialogue Strategy for Efficient Service Requirement Elicitation

With the flourish of services on the Internet, a prerequisite for servic...
research
10/18/2019

Unsupervised Context Rewriting for Open Domain Conversation

Context modeling has a pivotal role in open domain conversation. Existin...
research
09/26/2020

Learning to Plan and Realize Separately for Open-Ended Dialogue Systems

Achieving true human-like ability to conduct a conversation remains an e...
research
11/09/2018

Incorporating Relevant Knowledge in Context Modeling and Response Generation

To sustain engaging conversation, it is critical for chatbots to make go...
research
05/01/2020

A Controllable Model of Grounded Response Generation

Current end-to-end neural conversation models inherently lack the flexib...
research
10/13/2021

HEDP: A Method for Early Forecasting Software Defects based on Human Error Mechanisms

As the primary cause of software defects, human error is the key to unde...

Please sign up or login with your details

Forgot password? Click here to reset