Natural language processing approach to NLP meta model automation

Neuro Linguistic Programming (NLP) is one of the most utilised approaches for personality development and Meta model is one of the most important techniques in this process. Usually, when one speaks about a problem or a situation, the words that one chooses will delete, distort or generalize portion...

Full description

Bibliographic Details
Main Authors: Amirhosseini, Mohammad Hossein, Kazemian, Hassan, Ouazzane, Karim, Chandler, Chris
Format: Conference or Workshop Item
Language:English
Published: 2018
Subjects:
Online Access:https://repository.londonmet.ac.uk/3447/1/Paper.pdf
_version_ 1825625137838292992
author Amirhosseini, Mohammad Hossein
Kazemian, Hassan
Ouazzane, Karim
Chandler, Chris
author_facet Amirhosseini, Mohammad Hossein
Kazemian, Hassan
Ouazzane, Karim
Chandler, Chris
author_sort Amirhosseini, Mohammad Hossein
collection LMU
description Neuro Linguistic Programming (NLP) is one of the most utilised approaches for personality development and Meta model is one of the most important techniques in this process. Usually, when one speaks about a problem or a situation, the words that one chooses will delete, distort or generalize portions of their experience. Meta model, which is a set of specific questions or language patterns, can be used to understand and recover the information hidden behind the words used. This technique can be adopted to understand other people’s problems or enable them to understand their own issues better. Applying the Meta Model, however, requires a great level of skill and experience for correct identification of deletion, distortion and generalization. Using the appropriate recovery questions is challenging for NLP practitioners and Psychologists. Moreover, the efficiency and accuracy of existing methods on the Meta model can potentially be hindered by human errors such as personal judgment or lack of experience and skill. This research aims to automate the process of using the Meta Model in conversation in order to eliminate human errors, thereby increasing the efficiency and accuracy of this method. An intelligent software has been developed using Natural Language Processing, with the ability to apply the Meta model techniques during conversation with its user. Comparisons of this software with performance of an established NLP practitioner have shown increased accuracy in identification of the deletion and generalization processes. Recovery of information has also been more efficient in the software in comparison to an NLP practitioner.
first_indexed 2024-07-09T03:54:03Z
format Conference or Workshop Item
id oai:repository.londonmet.ac.uk:3447
institution London Metropolitan University
language English
last_indexed 2024-07-09T03:54:03Z
publishDate 2018
record_format eprints
spelling oai:repository.londonmet.ac.uk:34472021-03-12T14:56:38Z https://repository.londonmet.ac.uk/3447/ Natural language processing approach to NLP meta model automation Amirhosseini, Mohammad Hossein Kazemian, Hassan Ouazzane, Karim Chandler, Chris 150 Psychology Neuro Linguistic Programming (NLP) is one of the most utilised approaches for personality development and Meta model is one of the most important techniques in this process. Usually, when one speaks about a problem or a situation, the words that one chooses will delete, distort or generalize portions of their experience. Meta model, which is a set of specific questions or language patterns, can be used to understand and recover the information hidden behind the words used. This technique can be adopted to understand other people’s problems or enable them to understand their own issues better. Applying the Meta Model, however, requires a great level of skill and experience for correct identification of deletion, distortion and generalization. Using the appropriate recovery questions is challenging for NLP practitioners and Psychologists. Moreover, the efficiency and accuracy of existing methods on the Meta model can potentially be hindered by human errors such as personal judgment or lack of experience and skill. This research aims to automate the process of using the Meta Model in conversation in order to eliminate human errors, thereby increasing the efficiency and accuracy of this method. An intelligent software has been developed using Natural Language Processing, with the ability to apply the Meta model techniques during conversation with its user. Comparisons of this software with performance of an established NLP practitioner have shown increased accuracy in identification of the deletion and generalization processes. Recovery of information has also been more efficient in the software in comparison to an NLP practitioner. 2018-07-13 Conference or Workshop Item PeerReviewed text en https://repository.londonmet.ac.uk/3447/1/Paper.pdf Amirhosseini, Mohammad Hossein, Kazemian, Hassan, Ouazzane, Karim and Chandler, Chris (2018) Natural language processing approach to NLP meta model automation. In: International Joint Conference on Neural Networks (IJCNN), 8-13 July 2018, Rio de Janeiro, Brazil.
spellingShingle 150 Psychology
Amirhosseini, Mohammad Hossein
Kazemian, Hassan
Ouazzane, Karim
Chandler, Chris
Natural language processing approach to NLP meta model automation
title Natural language processing approach to NLP meta model automation
title_full Natural language processing approach to NLP meta model automation
title_fullStr Natural language processing approach to NLP meta model automation
title_full_unstemmed Natural language processing approach to NLP meta model automation
title_short Natural language processing approach to NLP meta model automation
title_sort natural language processing approach to nlp meta model automation
topic 150 Psychology
url https://repository.londonmet.ac.uk/3447/1/Paper.pdf
work_keys_str_mv AT amirhosseinimohammadhossein naturallanguageprocessingapproachtonlpmetamodelautomation
AT kazemianhassan naturallanguageprocessingapproachtonlpmetamodelautomation
AT ouazzanekarim naturallanguageprocessingapproachtonlpmetamodelautomation
AT chandlerchris naturallanguageprocessingapproachtonlpmetamodelautomation