<?xml version='1.0' encoding='utf-8'?>
<mods xmlns="http://www.loc.gov/mods/v3" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" version="3.7" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-7.xsd">
   <name>
      <role>
         <roleTerm type="text" authority="marcrelator" authorityURI="http://id.loc.gov/vocabulary/relators" valueURI="http://id.loc.gov/vocabulary/relators/cre">creator</roleTerm>
      </role>
      <namePart>Nagpure, Vaishali</namePart>
   </name>
   <titleInfo>
      <title>A Novel Explainability Approach For Spectrum Measurement Insight</title>
   </titleInfo>
   <originInfo>
      <dateCreated keyDate="yes">2023</dateCreated>
   </originInfo>
   <note displayLabel="Degree Awarded">Spring 2023</note>
   <typeOfResource authority="aat" valueURI="http://vocab.getty.edu/page/aat/300028029">Dissertation</typeOfResource>
   <name type="corporate">
      <affiliation>Illinois Institute of Technology</affiliation>
   </name>
   <name type="corporate">
      <namePart>CS / Computer Science</namePart>
   </name>
   <name authority="wikidata" authorityURI="https://www.wikidata.org" valueURI="https://www.wikidata.org/wiki/Q102150429">
      <role>
         <roleTerm type="text" authority="marcrelator" authorityURI="http://id.loc.gov/vocabulary/relators" valueURI="http://id.loc.gov/vocabulary/relators/cre">advisor</roleTerm>
      </role>
      <namePart>Hood, Cynthia Steiz</namePart>
   </name>
   <subject>
      <topic>Computer science</topic>
   </subject>
   <subject>
      <topic>Graph Database</topic>
   </subject>
   <subject>
      <topic>Information Modeling</topic>
   </subject>
   <subject>
      <topic>Neo4j</topic>
   </subject>
   <subject>
      <topic>Property Graph</topic>
   </subject>
   <subject>
      <topic>Spectrum Management</topic>
   </subject>
   <subject>
      <topic>Wireless Spectrum</topic>
   </subject>
   <language>
      <languageTerm type="code" authority="rfc3066">en</languageTerm>
   </language>
   <abstract>Spectrum is an extremely valuable natural resource in high demand. Although the spectrum has been fully allocated, there is no comprehensive method for understanding about how it’s being used. Spectrum measurements are highly complex spatiotemporal data sets that play a key role in understanding spectrum use and require very specialized domain information for understanding. To leverage existing and future spectrum measurements to the fullest extent, it is necessary to have a systematic way to connect them to the contextual information that helps provide meaning to the data. To analyze and interpret the measurements, a variety of contextual information is needed. This research develops a novel approach for spectrum measurement understanding that unifies five years of wideband spectrum measurement summary data together with relevant contextual information from a variety of sources in a spectrum knowledge graph. Both quantitative and qualitative information is modeled and implemented on a Neo4j graph database platform. This modeling formalizes the relationships that help spectrum stakeholders “connect the dots” and provide deeper understanding of RF spectrum utilization.  The knowledge graph can be queried to extract a wide variety of insights thus making spectrum knowledge more widely accessible to a variety of stakeholders.</abstract>
   <physicalDescription>
      <digitalOrigin>born digital</digitalOrigin>
      <internetMediaType>application/pdf</internetMediaType>
   </physicalDescription>
   <accessCondition type="useAndReproduction" displayLabel="rightsstatements.org">In
                Copyright</accessCondition>
   <accessCondition type="useAndReproduction" displayLabel="rightsstatements.orgURI">http://rightsstatements.org/page/InC/1.0/</accessCondition>
   <accessCondition type="restrictionOnAccess">Restricted Access</accessCondition>
<identifier type="hdl">http://hdl.handle.net/10560/islandora:1024333</identifier></mods>