FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING

Dialogue has been widely used for verbal communication between human and robot interaction, such as an assistant robot in hospital. However, this robot was usually limited by a predetermined dialogue, so it will be difficult to understand new words for a new desired goal. In this paper, we discus...

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Main Author: Rofi'ah, Binashir
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/49317
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:49317
spelling id-itb.:493172020-09-14T10:46:24ZFLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING Rofi'ah, Binashir Indonesia Theses Assistant Robot, Dialogue Management, Human-Robot Interaction, Knowledge Growing, Reinforcement Learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/49317 Dialogue has been widely used for verbal communication between human and robot interaction, such as an assistant robot in hospital. However, this robot was usually limited by a predetermined dialogue, so it will be difficult to understand new words for a new desired goal. In this paper, we discussed conversation on entertainment, motivation, emergency, and helping with knowledge growing method. Natural language processing was used to search unique words, and process new words that robot didn’t understand. The new words were called new knowledge, this knowledge was then added to database/initial Q-table. After that, Reinforcement Learning will learn to get relation between old database and new knowledge, the methods used were Q-Learning and SARSA. To cheer up patient, we provided playing mp3 audio for music, fairytale, comedy request, and motivation. The execution time for this request was 3.74 ms on average. In emergency situation, patient able to ask robot to call the nurse. Robot will record complaint of pain and inform nurse. From 7 emergency situation report, robot able to save complaint on database equipped with time recording. In helping conversation, robot will walk to pick up belongings of patient. Once the robot didn’t understand with patient’s conversation, robot will ask until it understands. From asking conversation, knowledge expanded from 2 until 10 with learning execution from 1500 ms until 3500 ms. Q-Learning takes longer time than SARSA, however, both were achieved desired object in 200 episodes. It concludes that method to overcome robot knowledge limitation in achieving new dialogue goal for patient assistant were formulated. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Dialogue has been widely used for verbal communication between human and robot interaction, such as an assistant robot in hospital. However, this robot was usually limited by a predetermined dialogue, so it will be difficult to understand new words for a new desired goal. In this paper, we discussed conversation on entertainment, motivation, emergency, and helping with knowledge growing method. Natural language processing was used to search unique words, and process new words that robot didn’t understand. The new words were called new knowledge, this knowledge was then added to database/initial Q-table. After that, Reinforcement Learning will learn to get relation between old database and new knowledge, the methods used were Q-Learning and SARSA. To cheer up patient, we provided playing mp3 audio for music, fairytale, comedy request, and motivation. The execution time for this request was 3.74 ms on average. In emergency situation, patient able to ask robot to call the nurse. Robot will record complaint of pain and inform nurse. From 7 emergency situation report, robot able to save complaint on database equipped with time recording. In helping conversation, robot will walk to pick up belongings of patient. Once the robot didn’t understand with patient’s conversation, robot will ask until it understands. From asking conversation, knowledge expanded from 2 until 10 with learning execution from 1500 ms until 3500 ms. Q-Learning takes longer time than SARSA, however, both were achieved desired object in 200 episodes. It concludes that method to overcome robot knowledge limitation in achieving new dialogue goal for patient assistant were formulated.
format Theses
author Rofi'ah, Binashir
spellingShingle Rofi'ah, Binashir
FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
author_facet Rofi'ah, Binashir
author_sort Rofi'ah, Binashir
title FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
title_short FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
title_full FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
title_fullStr FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
title_full_unstemmed FLEXIBLE DIALOGUE BETWEEN HUMAN AND ROBOT USING REINFORCEMENT LEARNING
title_sort flexible dialogue between human and robot using reinforcement learning
url https://digilib.itb.ac.id/gdl/view/49317
_version_ 1822928154786791424