Spelling suggestions: "subject:"extraction"" "subject:"axtraction""
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A kinetic study of enargite dissolution in ammoniacal solutionsGajam, Soliman Younes January 1981 (has links)
No description available.
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Application of potential-PH diagrams to the extraction of transition metals from ferromanganese nodulesDyke, James Tiner January 1979 (has links)
No description available.
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Filling Preposition-based Templates To Capture Information from Medical AbstractsLeroy, Gondy, Chen, Hsinchun January 2002 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / Due to the recent explosion of information in the biomedical field, it is hard for a single researcher to review the complex network involving genes, proteins, and interactions. We are currently building GeneScene, a toolkit that will assist researchers in reviewing existing literature, and report on the first phase in our development effort: extracting the relevant information from medical abstracts. We are developing a medical parser that extracts information, fills basic prepositional-based templates, and combines the templates to capture the underlying sentence logic. We tested our parser on 50 unseen abstracts and found that it extracted 246 templates with a precision of 70%. In comparison with many other techniques, more information was extracted without sacrificing precision. Future improvement in precision will be achieved by correcting three categories of errors.
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Multilingual Input System for the Web - an Open Multimedia Approach of Keyboard and Handwriting Recognition for Chinese and JapaneseRamsey, Marshall C., Ong, Thian-Huat, Chen, Hsinchun January 1998 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / The basic building block of a multilingual information
retrieval system is the input system. Chinese and
Japanese characters pose great challenges for the
conventional 101 -key alphabet-based keyboard, because
they are radical-based and number in the thousands. This
paper reviews the development of various approaches and
then presents a framework and working demonstrations of
Chinese and Japanese input methods implemented in
Java, which allow open deployment over the web to any
platform, The demo includes both popular keyboard input
methods and neural network handwriting recognition
using a mouse or pen. This framework is able to
accommodate future extension to other input mediums
and languages of interest.
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Inductive Query by Examples (IQBE): A Machine Learning ApproachChen, Hsinchun, She, Linlin January 1994 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / This paper presents an incremental, inductive learning approach to query-by examples for information retrieval (IR) and database management systems (DBMS). After briefly reviewing conventional information retrieval techniques and the prevailing database query paradigms, we introduce the ID5R algorithm, previously developed by Utgoff, for ``intelligent'' and system-supported query processing. We describe in detail how we adapted the ID5R algorithm for IR/DBMS applications and we present two examples, one for IR applications and the other for DBMS applications, to demonstrate the feasibility of the approach. Using a larger test collection of about 1000 document records from the COMPEN CD-ROM computing literature database and using recall as a performance measure, our experiment showed that the incremental ID5R performed significantly better than a batch inductive learning algorithm (called ID3) which we developed earlier. Both algorithms, however, were
robust and efficient in helping users develop abstract queries from examples. We believe this research has shed light on the feasibility and the novel characteristics of a new query paradigm, namely, inductive query-by examples
(IQBE). Directions of our current research are summarized at the end of the paper.
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Updateable PAT-Tree Approach to Chinese Key Phrase Extraction using Mutual Information: A Linguistic Foundation for Knowledge ManagementOng, Thian-Huat, Chen, Hsinchun January 1999 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / There has been renewed research interest in using the statistical approach to extraction
of key phrases from Chinese documents because existing approaches do not allow online
frequency updates after phrases have been extracted. This consequently results in
inaccurate, partial extraction. In this paper, we present an updateable PAT-tree
approach. In our experiment, we compared our approach with that of Lee-Feng Chien
with that showed an improvement in recall from 0.19 to 0.43 and in precision from 0.52
to 0.70. This paper also reviews the requirements for a data structure that facilitates
implementation of any statistical approaches to key-phrase extraction, including PATtree,
PAT-array and suffix array with semi-infinite strings.
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Multilingual input system for the Web - an open multimedia approach of keyboard and handwritten recognition for Chinese and JapaneseRamsey, Marshall C., Ong, Thian-Huat, Chen, Hsinchun January 1998 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / The basic building block of a multilingual information
retrieval system is the input system. Chinese and
Japanese characters pose great challenges for the
conventional 101-key alphabet-based keyboard, because
they are radical-based and number in the thousands. This
paper reviews the development of various approaches and
then presents a framework and working demonstrations of
Chinese and Japanese input methods implemented in
Java, which allow open deployment over the web to any
platform, The demo includes both popular keyboard input
methods and neural network handwriting recognition
using a mouse or pen. This framework is able to
accommodate future extension to other input mediums
and languages of interest.
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Concept-based searching and browsing: a geoscience experimentHauck, Roslin V., Sewell, Robin R., Ng, Tobun Dorbin, Chen, Hsinchun January 2001 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / In the recent literature, we have seen the expansion of information retrieval techniques to include a variety of different collections of information. Collections can have certain characteristics that can lead to different results for the various classification techniques. In addition, the ways and reasons that users explore each collection can affect the success of the information retrieval technique. The focus of this research was to extend the application of our statistical and neural network techniques to the domain of geological science information retrieval. For this study, a test bed of 22,636 geoscience abstracts was obtained through the NSF/DARPA/NASA funded Alexandria Digital Library Initiative project at the University of California at Santa Barbara. This collection was analyzed using algorithms previously developed by our research group: concept space algorithm for searching and a Kohonen self-organizing map (SOM) algorithm for browsing. Included in this paper are discussions of our techniques, user evaluations and lessons learned.
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DGPort: A Web Portal for Digital GovernmentYin, C.Q., Nickels, L.D., Chen, C.Z., Ng, Gavin, Chen, Hsinchun January 2003 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / This paper provides a summary of the initial development of a Web portal for the digital government
domain. Information retrieval techniques commonly used to find information on the Internet are
discussed along with the problems associated with these techniques that led to the development of the
Digital Government Web portal (DGPort). We also discuss the advantages that DGPort could have for
researchers in the digital government domain as well as the value-added features that this portal provides.
Future evaluation plans for the portal are also described.
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An Issues Identifier for Online Financial DatabasesYen, J., Chen, Hsinchun, Ma, P., Bui, T. January 1995 (has links)
Artificial Intelligence Lab, Department of MIS, University of Arizona / A major problem that decision makers are facing in an information-rich society is how to absorb, filter and make effective use of available data. The problem caused by information overflow could lead to the losses of competitiveness. This paper presents a knowledge-based approach to building an issues identifier to help investors
overcome information overflow problems when dealing with very large on-line financial databases. The proposed software system is able to extract critical issues from the on-line financial databases. The system was developed based on a number of techniques: automatic indexing, concept space genemtion, and neural network classification. In this paper, we describe how these techniques are used to extract subject descriptors, their semantic relationships, and the related texts (documents
or paragraphs) to each descriptor. The proposed system has been tested with the annual reports from thirteen of the largest international banks.
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