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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
371

Building an Infrastructure for Law Enforcement Information Sharing and Collaboration: Design Issues and Challenges

Chau, Michael, Atabakhsh, Homa, Zeng, Daniel, Chen, Hsinchun January 2001 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / With the exponential growth of the Internet, information can be shared among government agencies more easily than before. However, this also poses some design issues and challenges. This article reports on our experience in building an infrastructure for information sharing and collaboration in the law enforcement domain. Based on our user requirement studies with the Tucson Police Department, three main design challenges are identified and discussed in details. Based on our findings, we propose an infrastructure to address these issues. The proposed design consists of three modules, namely (1) Security and Confidentiality Management Module, (2) Information Access and Monitoring Module, and (3) Collaboration Module. A prototype system will be deployed and tested at the Tucson Police Department. We anticipate that our studies can potentially provide useful insight to other digital government research projects.
372

User Misconceptions of Information Retrieval Systems

Chen, Hsinchun, Dhar, Vasant January 1990 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / We report results of an investigation where thirty subjects were observed performing subject-based search in an online catalog system. The observations have revealed a range of misconceptions users have when performing subject-based search. We have developed a taxonomy that characterizes these misconceptions and a knowledge representation which explains these misconceptions. Directions for improving search performance are also suggested.
373

A graphical self-organizing approach to classifying electronic meeting output

Orwig, Richard E., Chen, Hsinchun, Nunamaker, Jay F. 02 1900 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / This article describes research in the application of a Kohonen Self-Organizing Map (SOM) to the problem of classification of electronic brainstorming output and an evaluation of the results. This research builds upon previous work in automating the meeting classification process using a Hopfield neural network. Evaluation of the Kohonen output comparing it with Hopfield and human expert output using the same set of data found that the Kohonen SOM performed as well as a human expert in representing term association in the meeting output and outperformed the Hopfield neural network algorithm. Recall of consensus meeting concepts and topics using the Kohonen algorithm was equivalent to that of the human expert.
374

Knowledge-Based Document Retrieval: Framework and Design

Chen, Hsinchun 06 1900 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / This article presents research on the design of knowledge-based document retrieval systems. We adopted a semantic network structure to represent subject knowledge and classification scheme knowledge and modeled experts' search strategies and user modeling capability as procedural knowledge. These functionalities were incorporated into a prototype knowledge-based retrieval system, Metacat. Our system, the design of which was based on the blackboard architecture, was able to create a user profile, identify task requirements, suggest heuristics-based search strategies, perform semantic-based search assistance, and assist online query refinement.
375

COPLINK: A Case of Intelligent Analysis and Knowledge Management

Hauck, Roslin V., Chen, Hsinchun January 1999 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / Law enforcement agencies across the United States have begun to focus on innovative knowledge management technologies to aid in the analysis of criminal information. The use of such technologies can serve as intelligence tools to combat criminal activity by aiding in case investigation or even by predicting criminal activity. Funded by the National Institute of Justice, the University of Arizonaâ s Artificial Intelligence Lab has teamed with the Tucson Police Department (TPD) to develop the Coplink Concept Space application, which serves to uncover relationships between different types of information currently existing in TPDâ s records management system. A small-scale field study involving real law enforcement personnel indicates that the use of Coplink Concept Space can reduce the time spent on the investigative task of linking criminal information as well as provide strong arguments for expanded development of similar knowledge management systems in support of law enforcement.
376

Longitudinal patent analysis for nanoscale science and engineering: Country, institution and technology field

Huang, Zan, Chen, Hsinchun, Yip, Alan, Ng, Gavin, Guo, Fei, Chen, Zhi-Kai, Roco, Mihail C. January 2003 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / Nanoscale science and engineering (NSE) and related areas have seen rapid growth in recent years. The speed and scope of development in the field have made it essential for researchers to be informed on the progress across different laboratories, companies, industries and countries. In this project, we experimented with several analysis and visualization techniques on NSE-related United States patent documents to support various knowledge tasks. This paper presents results on the basic analysis of nanotechnology patents between 1976 and 2002, content map analysis and citation network analysis. The data have been obtained on individual countries, institutions and technology fields. The top 10 countries with the largest number of nanotechnology patents are the United States, Japan, France, the United Kingdom, Taiwan, Korea, the Netherlands, Switzerland, Italy and Australia. The fastest growth in the last 5 years has been in chemical and pharmaceutical fields, followed by semiconductor devices. The results demonstrate potential of information-based discovery and visualization technologies to capture knowledge regarding nanotechnology performance, transfer of knowledge and trends of development through analyzing the patent documents.
377

Intellectual Capital and Knowledge Management: A Perpetual Self-Organizing (PSO) Approach

Chen, Hsinchun January 1998 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / Presentation given by Hsinchun Chen at the NASA Meeting during PMSEP3 on the future of knowledge management. The presentation describes research performed by the Artificial Intelligence Lab at the University of Arizona to create a Perpetual Self-Organizing (PSO) approach to knowledge management funded by NSF, DARPA, NASA, NIJ, and NIH.
378

Cognitive Process as a Basis for Intelligent Retrieval Systems Design

Chen, Hsinchun, Dhar, Vasant January 1991 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / Two studies were conducted to investigate the cognitive processes involved in online document-based information retrieval. These studies led to the development of five computational models of online document retrieval. These models were then incorporated into the design of an "intelligent" document-based retrieval system. Following a discussion of this system, we discuss the broader implications of our research for the design of information retrieval systems.
379

Validating a Geographic Image Retrieval System

Zhu, Bin, Chen, Hsinchun January 2000 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / This paper summarizes a prototype geographical image retrieval system that demonstrates how to integrate image processing and information analysis techniques to support large-scale content-based image retrieval. By using an image as its interface, the prototype system addresses a troublesome aspect of traditional retrieval models, which require users to have complete knowledge of the low-level features of an image. In addition we describe an experiment to validate the performance of this image retrieval system against that of human subjects in an effort to address the scarcity of research evaluating performance of an algorithm against that of human beings. The results of the experiment indicate that the system could do as well as human subjects in accomplishing the tasks of similarity analysis and image categorization. We also found that under some circumstances texture features of an image are insufficient to represent a geographic image. We believe, however, that our image retrieval system provides a promising approach to integrating image processing techniques and information retrieval algorithms.
380

Automaticially Detecting Deceptive Criminal Identities

Wang, Gang, Chen, Hsinchun, Atabakhsh, Homa 03 1900 (has links)
Artificial Intelligence Lab, Department of MIS, Univeristy of Arizona / Fear about identity verification reached new heights since the terrorist attacks on Sept. 11, 2001, with national security issues related to detecting identity deception attracting more interest than ever before. Identity deception is an intentional falsification of identity in order to deter investigations. Conventional investigation methods run into difficulty when dealing with criminals who use deceptive or fraudulent identities, as the FBI discovered when trying to determine the true identities of 19 hijackers involved in the attacks. Besides its use in post-event investigation, the ability to validate identity can also be used as a tool to prevent future tragedies. Here, we focus on uncovering patterns of criminal identity deception based on actual criminal records and suggest an algorithmic approach to revealing deceptive identities.

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