Techniques for scoring motive imagery in text - part B

This report summaries the width and depth contextual knowledge on the state of art technologies for natural language processing worked throughout the 40 weeks of professional final year project. Developing a Rule -Based System for Motive Imagery in Text – Part B was the objective scope of our projec...

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Main Author: Wong, Alvin Ann Ying
Other Authors: Chen Lihui
Format: Final Year Project
Language:English
Published: 2019
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Online Access:http://hdl.handle.net/10356/77427
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-774272023-07-07T15:55:36Z Techniques for scoring motive imagery in text - part B Wong, Alvin Ann Ying Chen Lihui School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering This report summaries the width and depth contextual knowledge on the state of art technologies for natural language processing worked throughout the 40 weeks of professional final year project. Developing a Rule -Based System for Motive Imagery in Text – Part B was the objective scope of our project. Our task was to assist the Psychologist to detect motive imagery within a given list of text conversations or Thematic Apperception Test (TAT) stories. The highlights include understanding the relationship between human cognitive thinking process and writings skills with the computers’ interpretation with regards to humans’ knowledge and our capabilities in identifying motive or emotions. Also, unwinding the term ‘Black Box’ will also be deeply explained how machine learning models unwrap and replicate the ability of human to achieve high levels of ‘intelligence’. The use of recent framework like long-short term memory and convolution neural network will effectively generalises motive in a more robust manner. Application programming interface like TensorFlow and Keras/Sci-kit learn are also widely used to assist huge computational work in order for the model to operate successfully. A total of three motive imagery, Achievement, Power and Affiliation, were tested on TAT stories, a psychological data set of 17,462 written sentences. Five experimental models are constructed and validated using Precision, Recall, F-measure, accuracy and F-measures. Global Vector Embedding is the ‘twisting’ factor for achieve more promising results. Our finalized model was able to achieve a result of 67.5% F-measure with a validation loss of 0.21 for Achievement, 42.5% F-measure with a validation loss of 0.31 for Power, 49.9% F-measure with a validation loss of 0.31 for Affiliation. It successfully demonstrates the impact of using pre-trained word embeddings in binary classification task for running text. The evaluation results of difference models will demonstrate their suitability in terms of application in natural language processing. Bachelor of Engineering (Information Engineering and Media) 2019-05-29T01:54:56Z 2019-05-29T01:54:56Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/77427 en Nanyang Technological University 66 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Wong, Alvin Ann Ying
Techniques for scoring motive imagery in text - part B
description This report summaries the width and depth contextual knowledge on the state of art technologies for natural language processing worked throughout the 40 weeks of professional final year project. Developing a Rule -Based System for Motive Imagery in Text – Part B was the objective scope of our project. Our task was to assist the Psychologist to detect motive imagery within a given list of text conversations or Thematic Apperception Test (TAT) stories. The highlights include understanding the relationship between human cognitive thinking process and writings skills with the computers’ interpretation with regards to humans’ knowledge and our capabilities in identifying motive or emotions. Also, unwinding the term ‘Black Box’ will also be deeply explained how machine learning models unwrap and replicate the ability of human to achieve high levels of ‘intelligence’. The use of recent framework like long-short term memory and convolution neural network will effectively generalises motive in a more robust manner. Application programming interface like TensorFlow and Keras/Sci-kit learn are also widely used to assist huge computational work in order for the model to operate successfully. A total of three motive imagery, Achievement, Power and Affiliation, were tested on TAT stories, a psychological data set of 17,462 written sentences. Five experimental models are constructed and validated using Precision, Recall, F-measure, accuracy and F-measures. Global Vector Embedding is the ‘twisting’ factor for achieve more promising results. Our finalized model was able to achieve a result of 67.5% F-measure with a validation loss of 0.21 for Achievement, 42.5% F-measure with a validation loss of 0.31 for Power, 49.9% F-measure with a validation loss of 0.31 for Affiliation. It successfully demonstrates the impact of using pre-trained word embeddings in binary classification task for running text. The evaluation results of difference models will demonstrate their suitability in terms of application in natural language processing.
author2 Chen Lihui
author_facet Chen Lihui
Wong, Alvin Ann Ying
format Final Year Project
author Wong, Alvin Ann Ying
author_sort Wong, Alvin Ann Ying
title Techniques for scoring motive imagery in text - part B
title_short Techniques for scoring motive imagery in text - part B
title_full Techniques for scoring motive imagery in text - part B
title_fullStr Techniques for scoring motive imagery in text - part B
title_full_unstemmed Techniques for scoring motive imagery in text - part B
title_sort techniques for scoring motive imagery in text - part b
publishDate 2019
url http://hdl.handle.net/10356/77427
_version_ 1772825524646707200