Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns
The purpose of this dissertation intends to discover as well as categorize safety concern reports in online reviews by using key terms prevalent in sub-categories of safety concerns. This dissertation extends the literature of semi-automatic text classification methodology in monitoring and classify...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-1016862021-11-23T05:47:41Z Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns Zaman, Nohel Management Abrahams, Alan Samuel Ragsdale, Cliff T. Seref, Michelle Marie Hanna Wang, Gang Alan Russell, Roberta S. online reviews text analytics risk assessment hospitals service quality The purpose of this dissertation intends to discover as well as categorize safety concern reports in online reviews by using key terms prevalent in sub-categories of safety concerns. This dissertation extends the literature of semi-automatic text classification methodology in monitoring and classifying product quality and service concerns. We develop various text classification methods for finding key concerns across a diverse set of product and service categories. Additionally, we generalize our results by testing the performance of our methodologies on online reviews collected from two different data sources (Amazon product reviews and Facebook hospital service reviews). Stakeholders such as product designers and safety regulators can use the semi-automatic classification procedure to subcategorize safety concerns by injury type and narrative type (Chapter 1). We enhance the text classification approach by proposing a Risk Assessment Model for quality management (QM) professionals, safety regulators, and product designers to allow them to estimate overall risk level of specific products by analyzing consumer-generated content in online reviews (Chapter 2). Monitoring and prioritizing the hazard risk levels of products will help the stakeholders to make appropriate actions on mitigating the risk of product safety. Lastly, the text classification approach discovers and ranks aspects of services that predict overall user satisfaction (Chapter 3). The key service terms are beneficial for healthcare providers to rapidly trace specific service concerns for improving the hospital services. Doctor of Philosophy 2020-12-31T07:00:27Z 2020-12-31T07:00:27Z 2019-07-09 Dissertation vt_gsexam:20871 http://hdl.handle.net/10919/101686 This item is protected by copyright and/or related rights. Some uses of this item may be deemed fair and permitted by law even without permission from the rights holder(s), or the rights holder(s) may have licensed the work for use under certain conditions. For other uses you need to obtain permission from the rights holder(s). ETD application/pdf Virginia Tech |
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online reviews text analytics risk assessment hospitals service quality Zaman, Nohel Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
description |
The purpose of this dissertation intends to discover as well as categorize safety concern reports in online reviews by using key terms prevalent in sub-categories of safety concerns. This dissertation extends the literature of semi-automatic text classification methodology in monitoring and classifying product quality and service concerns. We develop various text classification methods for finding key concerns across a diverse set of product and service categories. Additionally, we generalize our results by testing the performance of our methodologies on online reviews collected from two different data sources (Amazon product reviews and Facebook hospital service reviews). Stakeholders such as product designers and safety regulators can use the semi-automatic classification procedure to subcategorize safety concerns by injury type and narrative type (Chapter 1). We enhance the text classification approach by proposing a Risk Assessment Model for quality management (QM) professionals, safety regulators, and product designers to allow them to estimate overall risk level of specific products by analyzing consumer-generated content in online reviews (Chapter 2). Monitoring and prioritizing the hazard risk levels of products will help the stakeholders to make appropriate actions on mitigating the risk of product safety. Lastly, the text classification approach discovers and ranks aspects of services that predict overall user satisfaction (Chapter 3). The key service terms are beneficial for healthcare providers to rapidly trace specific service concerns for improving the hospital services. === Doctor of Philosophy |
author2 |
Management |
author_facet |
Management Zaman, Nohel |
author |
Zaman, Nohel |
author_sort |
Zaman, Nohel |
title |
Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
title_short |
Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
title_full |
Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
title_fullStr |
Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
title_full_unstemmed |
Online Review Analytics: New Methods for discovering Key Product Quality and Service Concerns |
title_sort |
online review analytics: new methods for discovering key product quality and service concerns |
publisher |
Virginia Tech |
publishDate |
2020 |
url |
http://hdl.handle.net/10919/101686 |
work_keys_str_mv |
AT zamannohel onlinereviewanalyticsnewmethodsfordiscoveringkeyproductqualityandserviceconcerns |
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1719495392747323392 |