Adaptive Hierarchial Classification with Limited Training Data
This research focused on the development of a approach for classification that is robust with respect to training data that are limited both in quantity and spatial extent. Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the curse o...
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description | This research focused on the development of a approach for classification that is robust with respect to training data that are limited both in quantity and spatial extent. Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the curse of dimensionality, it is necessary to reduce the size of the input space when there is only a limited quantity of training data available. While a significant amount of research has focused on transforming the input space into a reduced feature space that accurately discriminates between the classes in a fixed output space, traditional approaches fail to capitalize on the domain knowledge and flexibility gained by transforming the feature space and the output space simultaneously. A new approach is proposed that utilizes domain knowledge, which is automatically discovered from the data, to combat the smail sample size problem. |
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Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the curse of dimensionality, it is necessary to reduce the size of the input space when there is only a limited quantity of training data available. While a significant amount of research has focused on transforming the input space into a reduced feature space that accurately discriminates between the classes in a fixed output space, traditional approaches fail to capitalize on the domain knowledge and flexibility gained by transforming the feature space and the output space simultaneously. A new approach is proposed that utilizes domain knowledge, which is automatically discovered from the data, to combat the smail sample size problem.</description><language>eng</language><subject>ADAPTIVE SYSTEMS ; CLASSIFICATION ; HIERARCHIES ; Information Science ; INPUT ; QUANTITY ; STATISTICS ; Statistics and Probability ; THESES ; TRAINING</subject><creationdate>2002</creationdate><rights>APPROVED FOR PUBLIC RELEASE</rights><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>230,776,881,27544,27545</link.rule.ids><linktorsrc>$$Uhttps://apps.dtic.mil/sti/citations/ADA403215$$EView_record_in_DTIC$$FView_record_in_$$GDTIC$$Hfree_for_read</linktorsrc></links><search><creatorcontrib>Morgan, Joseph T</creatorcontrib><creatorcontrib>AIR FORCE INST OF TECH WRIGHT-PATTERSONAFB OH</creatorcontrib><title>Adaptive Hierarchial Classification with Limited Training Data</title><description>This research focused on the development of a approach for classification that is robust with respect to training data that are limited both in quantity and spatial extent. Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the curse of dimensionality, it is necessary to reduce the size of the input space when there is only a limited quantity of training data available. While a significant amount of research has focused on transforming the input space into a reduced feature space that accurately discriminates between the classes in a fixed output space, traditional approaches fail to capitalize on the domain knowledge and flexibility gained by transforming the feature space and the output space simultaneously. A new approach is proposed that utilizes domain knowledge, which is automatically discovered from the data, to combat the smail sample size problem.</description><subject>ADAPTIVE SYSTEMS</subject><subject>CLASSIFICATION</subject><subject>HIERARCHIES</subject><subject>Information Science</subject><subject>INPUT</subject><subject>QUANTITY</subject><subject>STATISTICS</subject><subject>Statistics and Probability</subject><subject>THESES</subject><subject>TRAINING</subject><fulltext>true</fulltext><rsrctype>report</rsrctype><creationdate>2002</creationdate><recordtype>report</recordtype><sourceid>1RU</sourceid><recordid>eNrjZLBzTEksKMksS1XwyEwtSixKzshMzFFwzkksLs5My0xOLMnMz1MozyzJUPDJzM0sSU1RCClKzMzLzEtXcEksSeRhYE1LzClO5YXS3Awybq4hzh66KSWZyfHFJZl5qSXxji6OJgbGRoamxgSkAWbuLW8</recordid><startdate>200205</startdate><enddate>200205</enddate><creator>Morgan, Joseph T</creator><scope>1RU</scope><scope>BHM</scope></search><sort><creationdate>200205</creationdate><title>Adaptive Hierarchial Classification with Limited Training Data</title><author>Morgan, Joseph T</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-dtic_stinet_ADA4032153</frbrgroupid><rsrctype>reports</rsrctype><prefilter>reports</prefilter><language>eng</language><creationdate>2002</creationdate><topic>ADAPTIVE SYSTEMS</topic><topic>CLASSIFICATION</topic><topic>HIERARCHIES</topic><topic>Information Science</topic><topic>INPUT</topic><topic>QUANTITY</topic><topic>STATISTICS</topic><topic>Statistics and Probability</topic><topic>THESES</topic><topic>TRAINING</topic><toplevel>online_resources</toplevel><creatorcontrib>Morgan, Joseph T</creatorcontrib><creatorcontrib>AIR FORCE INST OF TECH WRIGHT-PATTERSONAFB OH</creatorcontrib><collection>DTIC Technical Reports</collection><collection>DTIC STINET</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Morgan, Joseph T</au><aucorp>AIR FORCE INST OF TECH WRIGHT-PATTERSONAFB OH</aucorp><format>book</format><genre>unknown</genre><ristype>RPRT</ristype><btitle>Adaptive Hierarchial Classification with Limited Training Data</btitle><date>2002-05</date><risdate>2002</risdate><abstract>This research focused on the development of a approach for classification that is robust with respect to training data that are limited both in quantity and spatial extent. Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the curse of dimensionality, it is necessary to reduce the size of the input space when there is only a limited quantity of training data available. While a significant amount of research has focused on transforming the input space into a reduced feature space that accurately discriminates between the classes in a fixed output space, traditional approaches fail to capitalize on the domain knowledge and flexibility gained by transforming the feature space and the output space simultaneously. A new approach is proposed that utilizes domain knowledge, which is automatically discovered from the data, to combat the smail sample size problem.</abstract><oa>free_for_read</oa></addata></record> |
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subjects | ADAPTIVE SYSTEMS CLASSIFICATION HIERARCHIES Information Science INPUT QUANTITY STATISTICS Statistics and Probability THESES TRAINING |
title | Adaptive Hierarchial Classification with Limited Training Data |
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