Autonomous language processing for business solutions

A speech analytics solution worked with the combination of speech recognition and Natural Language Processing (NLP). It converted spoken sentences into written words by using Python Programming and with the help of Google Cloud Speech To Text API. Speech recognition steps included receiving "sp...

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Main Author: Kor, Jia Li
Format: Final Year Project / Dissertation / Thesis
Published: 2021
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Online Access:http://eprints.utar.edu.my/5217/1/1705353_FYP.pdf
http://eprints.utar.edu.my/5217/
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spelling my-utar-eprints.52172023-02-11T13:13:11Z Autonomous language processing for business solutions Kor, Jia Li HG Finance A speech analytics solution worked with the combination of speech recognition and Natural Language Processing (NLP). It converted spoken sentences into written words by using Python Programming and with the help of Google Cloud Speech To Text API. Speech recognition steps included receiving "speech" either through microphone or audio files firstly. Then, the “speech” converted from physical sound into an electrical signal. The electrical signal was then being converted into digital data using an analogue-to-digital converter. Lastly, a model was used to convert the audio into text once it has been digitized. NLP helped a computer to understand languages spoken by humans. It was explained as an automated way of analysing the written text by following some theories and technologies. In the business area, speech analytics were used to make predictions and developed an understanding of the clients’ metrics . In this study, we focused on the languages such as Malay languages and mixed languages which were commonly used in Malaysia. Most of the call recordings data that used were basically containing these two languages. As Malay and mixed languages were not the worldwide languages, it increased the difficulty of developing a speech analytics solution that converted these two languages accurately into written text. Therefore, we expected that the results of this research improved the accuracy of speech analytics solutions so that it increased the efficiency of the insurance company in dealing with their clients. The accuracy of the speech analytics solutions in converting the spoken word into written text was investigated with Word Recognition Rate and an accuracy scale table used as a reference. There were two factors such as “Time Cut Point” and audio’s speed, being investigated in order to determine whether it would bring any effect towards the accuracy of text transcription. Different “Time Cut Point” and audio’s speed used in manipulating the data. Both factors were analysed together in a combination form. The best combination was chosen for both evaluation methods (WRR and accuracy scale table). 2021 Final Year Project / Dissertation / Thesis NonPeerReviewed application/pdf http://eprints.utar.edu.my/5217/1/1705353_FYP.pdf Kor, Jia Li (2021) Autonomous language processing for business solutions. Final Year Project, UTAR. http://eprints.utar.edu.my/5217/
institution Universiti Tunku Abdul Rahman
building UTAR Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tunku Abdul Rahman
content_source UTAR Institutional Repository
url_provider http://eprints.utar.edu.my
topic HG Finance
spellingShingle HG Finance
Kor, Jia Li
Autonomous language processing for business solutions
description A speech analytics solution worked with the combination of speech recognition and Natural Language Processing (NLP). It converted spoken sentences into written words by using Python Programming and with the help of Google Cloud Speech To Text API. Speech recognition steps included receiving "speech" either through microphone or audio files firstly. Then, the “speech” converted from physical sound into an electrical signal. The electrical signal was then being converted into digital data using an analogue-to-digital converter. Lastly, a model was used to convert the audio into text once it has been digitized. NLP helped a computer to understand languages spoken by humans. It was explained as an automated way of analysing the written text by following some theories and technologies. In the business area, speech analytics were used to make predictions and developed an understanding of the clients’ metrics . In this study, we focused on the languages such as Malay languages and mixed languages which were commonly used in Malaysia. Most of the call recordings data that used were basically containing these two languages. As Malay and mixed languages were not the worldwide languages, it increased the difficulty of developing a speech analytics solution that converted these two languages accurately into written text. Therefore, we expected that the results of this research improved the accuracy of speech analytics solutions so that it increased the efficiency of the insurance company in dealing with their clients. The accuracy of the speech analytics solutions in converting the spoken word into written text was investigated with Word Recognition Rate and an accuracy scale table used as a reference. There were two factors such as “Time Cut Point” and audio’s speed, being investigated in order to determine whether it would bring any effect towards the accuracy of text transcription. Different “Time Cut Point” and audio’s speed used in manipulating the data. Both factors were analysed together in a combination form. The best combination was chosen for both evaluation methods (WRR and accuracy scale table).
format Final Year Project / Dissertation / Thesis
author Kor, Jia Li
author_facet Kor, Jia Li
author_sort Kor, Jia Li
title Autonomous language processing for business solutions
title_short Autonomous language processing for business solutions
title_full Autonomous language processing for business solutions
title_fullStr Autonomous language processing for business solutions
title_full_unstemmed Autonomous language processing for business solutions
title_sort autonomous language processing for business solutions
publishDate 2021
url http://eprints.utar.edu.my/5217/1/1705353_FYP.pdf
http://eprints.utar.edu.my/5217/
_version_ 1758583132580216832
score 13.18916