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              <creatorName>Tawosi, Vali</creatorName>
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            <creator>
              <creatorName>Alsubaihin, Afnan Abdulaziz A</creatorName>
              <givenName>Afnan Abdulaziz A</givenName>
              <familyName>Alsubaihin</familyName>
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            <creator>
              <creatorName>Sarro, Federica</creatorName>
              <givenName>Federica</givenName>
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          <titles>
            <title><![CDATA[Additional material for the paper "Investigating the Effectiveness of Clustering for Story Point Estimation"]]></title>
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          <subjects>
            <subject>Software engineering not elsewhere classified</subject>
            <subject>Software Effort Estimation</subject>
            <subject>Story Point Estimation</subject>
            <subject>Latent Dirichlet Allocation</subject>
            <subject>Hierarchical Clustering</subject>
            <subject>Software Engineering</subject>
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            <date dateType="Created">2022-10-31</date>
            <date dateType="Updated">2023-05-30</date>
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          <publicationYear>2022</publicationYear>
          <publisher>University College London</publisher>
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            <description descriptionType="Abstract"><![CDATA[This repository contains the data and code used in the paper titled "Investigating the Effectiveness of Clustering for Story Point Estimation" by Vali Tawosi, Afnan Al-Subaihin, and Federica Sarro, accepted at the IEEE International Conference on Software Analysis, Evolution and Reengineering (SANER), 2022.<br>]]></description>
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