Oktarini2020

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Oktarini2020
BibType ARTICLE
Key Oktarini2020
Author(s) Kadek Ratih Dwi Oktarini
Title Are You Flirting, Objectifying or What? a Conversation Analysis of “you’re very sexy” Conversational Turn
Editor(s)
Tag(s) EMCA, Indonesian, Intent, Conversational agents, Conversation design, AI reference list
Publisher
Year 2020
Language English
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Journal Jurnal Sosial dan Humaniora
Volume 10
Number 3
Pages 294-308
URL Link
DOI
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Institution
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Howpublished
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Abstract

Intent identification is one of the most critical components in conversational agent design. Conversational agent “is any dialogue system that not only conducts natural language processing but also responds automatically using human language.” (Conversational Agent, 2019). The crux of designing human-like conversational agent is to mimic how human understands another human and then responds “naturally”. The current study attempts to answer the fundamental question: how to model human processes of understanding another human? In order to answer that question, it starts from exploring some basic concepts relevant to intent identification from Conversation Analysis (CA). CA is a mature field that studies authentic human interaction. The basic concepts from CA are then synthesised into a model that potentially fit to existing framework and paradigm in conversational agent design, i.e. Natural Conversation Framework (NCF) and Intent-Entity-Context-Response (IECR) paradigm. Instead of using a made-up sentence, the model is then tested to an authentic conversational turn seksi sekali dirimu ‘you’re very sexy’. The test shows that the model is able to detect several possible intents contain in this authentic conversational turn. The model is also able to handle Conversational Indonesian and multi-modality. Considering the versatility of Conversation Analysis, in all likelihood the model will be able to handle any language and all kinds of modalities. Future study can be done to analyse more Conversational Indonesian data (to develop library of intent for Conversational Indonesian Language), as well as conversational data from different languages and conversational data containing diverse modalities.

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