Knowledge Discovery and Management within Service Centers

These days, most enterprise service centers deploy Knowledge Discovery and Management (KDM) systems to address the challenge of timely delivery of a resourceful service request resolution while efficiently utilizing the huge amount of data. These KDM systems facilitate prompt response to the critica...

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Main Author: Zaman, Nazia
Format: Others
Published: North Dakota State University 2016
Online Access:http://hdl.handle.net/10365/25575
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spelling ndltd-ndsu.edu-oai-library.ndsu.edu-10365-255752021-09-28T17:11:24Z Knowledge Discovery and Management within Service Centers Zaman, Nazia These days, most enterprise service centers deploy Knowledge Discovery and Management (KDM) systems to address the challenge of timely delivery of a resourceful service request resolution while efficiently utilizing the huge amount of data. These KDM systems facilitate prompt response to the critical service requests and if possible then try to prevent the service requests getting triggered in the first place. Nevertheless, in most cases, information required for a request resolution is dispersed and suppressed under the mountain of irrelevant information over the Internet in unstructured and heterogeneous formats. These heterogeneous data sources and formats complicate the access to reusable knowledge and increase the response time required to reach a resolution. Moreover, the state-of-the art methods neither support effective integration of domain knowledge with the KDM systems nor promote the assimilation of reusable knowledge or Intellectual Capital (IC). With the goal of providing an improved service request resolution within the shortest possible time, this research proposes an IC Management System. The proposed tool efficiently utilizes domain knowledge in the form of semantic web technology to extract the most valuable information from those raw unstructured data and uses that knowledge to formulate service resolution model as a combination of efficient data search, classification, clustering, and recommendation methods. Our proposed solution also handles the technology categorization of a service request which is very crucial in the request resolution process. The system has been extensively evaluated with several experiments and has been used in a real enterprise customer service center. 2016-04-20T15:00:36Z 2016-04-20T15:00:36Z 2016 text/dissertation movingimage/video http://hdl.handle.net/10365/25575 NDSU Policy 190.6.2 https://www.ndsu.edu/fileadmin/policy/190.pdf video/quicktime application/pdf North Dakota State University
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description These days, most enterprise service centers deploy Knowledge Discovery and Management (KDM) systems to address the challenge of timely delivery of a resourceful service request resolution while efficiently utilizing the huge amount of data. These KDM systems facilitate prompt response to the critical service requests and if possible then try to prevent the service requests getting triggered in the first place. Nevertheless, in most cases, information required for a request resolution is dispersed and suppressed under the mountain of irrelevant information over the Internet in unstructured and heterogeneous formats. These heterogeneous data sources and formats complicate the access to reusable knowledge and increase the response time required to reach a resolution. Moreover, the state-of-the art methods neither support effective integration of domain knowledge with the KDM systems nor promote the assimilation of reusable knowledge or Intellectual Capital (IC). With the goal of providing an improved service request resolution within the shortest possible time, this research proposes an IC Management System. The proposed tool efficiently utilizes domain knowledge in the form of semantic web technology to extract the most valuable information from those raw unstructured data and uses that knowledge to formulate service resolution model as a combination of efficient data search, classification, clustering, and recommendation methods. Our proposed solution also handles the technology categorization of a service request which is very crucial in the request resolution process. The system has been extensively evaluated with several experiments and has been used in a real enterprise customer service center.
author Zaman, Nazia
spellingShingle Zaman, Nazia
Knowledge Discovery and Management within Service Centers
author_facet Zaman, Nazia
author_sort Zaman, Nazia
title Knowledge Discovery and Management within Service Centers
title_short Knowledge Discovery and Management within Service Centers
title_full Knowledge Discovery and Management within Service Centers
title_fullStr Knowledge Discovery and Management within Service Centers
title_full_unstemmed Knowledge Discovery and Management within Service Centers
title_sort knowledge discovery and management within service centers
publisher North Dakota State University
publishDate 2016
url http://hdl.handle.net/10365/25575
work_keys_str_mv AT zamannazia knowledgediscoveryandmanagementwithinservicecenters
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