Unstructured Content Analysis & Classification System for the IRS

Alain Azagury, Michael E Facto, Yoelle S Maarek, Benny Mandler, Michael Benedikt, Christoph Koch, Elisa Bertino, Giovanna Guerrini, Marco Mesiti, Angela Bonifati, Stefano Ceri, Stefano Paraboschi, Yannis Charalabidis, Fenareti Lampathaki, Dimitris Askounis, Shu-Yao Chien,Vassilis J. Tsotras,Carlo Zaniolo,Donghui Zhang, Tae-Sun Chung, Hyoung-Joo Kim

semanticscholar(2020)

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摘要
Creating ontological approaches to personalizing queries of unstructured data requires intensive use of XML-based tables and schema. From the legacy design efforts for CSDL to the myriad of approaches to XML schema development including the development of XIRQL , Hybrid XML retrieval and XML queries , the adoption of advanced techniques for unstructured content management is progressing rapidly. Paralleling these research advances is pervasive adoption of Cloud Computing platforms including Software-as-a-Service (SaaS), driven by the growth of the Amazon Web Services platform in addition to others. The intent of this thesis proposal is to define an XML schema that can aggregate unstructured content that when combined based on the individualized taxonomies and ontological preferences of system users, delivers highly relevant and timely data. The proposed XML Schema Model for Unstructured Content Personalization shown in Figure 1. This model is further supported by the development of and continual fine-tuning of Quantum Information Algorithms to define approximate taxonomies and approaches to creating role-based query is used as the basis of creating personalization pathways in the data. Quantum Information Theory also makes it possible to create enterprise-wide networks of knowledge management systems that can effectively "learn" over time through the use of latent semantic indexing (LSI) to create linguistic models of representation of the data. Quantum Information Theory provides the basis for creating an entire network of systems that can in essence learn over time, continually fueling new insights into the knowledgebase of the complex of systems themselves.
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