The Mining and Analysis of Data with Mixed Attribute Types

Ed Wakelam, Neil Davey, Yi Sun, Amanda Jefferies, Parimala Alva, Alex Hocking

Research output: Chapter in Book/Report/Conference proceedingConference contribution

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Abstract

Mining and analysis of large data sets has become a major contributor to the exploitation of Artificial Intelligence in a wide range of real life challenges, including education, business intelligence and research. In the field of education, the mining, extraction and exploitation of useful information and patterns from student data provides lecturers, trainers and organisations with the potential to tailor learning paths and materials to maximize teaching efficiency and to predict and influence student success rates. Progress in this important area of student data analytics can provide useful techniques for exploitation in the development of adaptive learning systems. Student data often includes a combination of nominal and numeric data. A large variety of techniques are available to analyse numeric data, however there are fewer techniques applicable to nominal data. In this paper, we summarise our progress in applying a combination of what we believe to be a novel technique to analyse nominal data by making a systematic comparison of data pairs, followed by numeric data analysis, providing the opportunity to focus on promising correlations for deeper analysis.
Original languageEnglish
Title of host publicationProceedings: IMMM 2016: Sixth International Conference on Advances in Information Mining and Management
Place of PublicationValencia
PublisherIARIA
Pages32-37
Number of pages6
Edition6
ISBN (Electronic)978-1-61208-477-0
Publication statusPublished - 22 May 2016
EventIMMM 2016, The Sixth International Conference on Advances in Information Mining and Management - Valencia, Spain
Duration: 22 May 201626 May 2016

Conference

ConferenceIMMM 2016, The Sixth International Conference on Advances in Information Mining and Management
Country/TerritorySpain
CityValencia
Period22/05/1626/05/16

Keywords

  • Educational Data Mining; Data Analytics; Numeric, Nominal Data Analysis; Dimensionality reduction; Knowledge Extraction.

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