
Unveiling the Intelligent Data Mining in ISAT/CS 344 Curriculum
Explore the transformation of the IKM curriculum for ISAT/CS 344 Intelligent Systems through text mining and R technology. Discover the background, scope, specifications, methodology, and findings of this innovative approach, aimed at enhancing educational outcomes and industry relevance.
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Presentation Transcript
IntelligentDataMining to Verify IKM Curriculum ISAT/CS 344 Intelligent Systems Patrick Knowlan Mark Ostrander Chris Jackson Rob Katich
Introduction What is the current IKM curriculum? Current technical market Constantly changing, Recruit-A-Duke job postings IS to search job criteria Derive high-quality information from text. Appearance and frequency of key words Reference with technical/functional descriptions to reevaluate IKM course
Background/ Purpose Text Mining using R Search technology Compare and contrasts short text strings Define a relationship Looks for frequent key words Adjust IKM curriculum
Size and Scope Mine data to make useful for faculty and students of the ISAT department Future curriculums for the IKM concentration Possibly other curriculums
Specifications The R Project statistical computing Multiple packages tm library NLP Depends on eight additional packages for functionality Text mining to analyze recruitment data
Methodology Text mining using R Create readable file (.csv MS-DOS) Create a corpus Format and filter text Search frequency of key words Create dictionaries of appropriate terms Compare and contrast searches Make suggestion based on results
Discoveries Capabilities Reduces time Organization & formatting Frequency analysis Term grouping / association Limitations Program compatibility Mac vs. PC Search capabilities C++ C#
Demonstration IKM Curriculum
Results ISAT Matching Curriculum 80 70 60 50 dbskills msoffice ooprog visualbasic webdev Frequency 40 30 20 10 0 Term
Results Non ISAT Curriculum 60 android ERP ios java jquery mysql oracle perl php python ror ruby sharepoint unix 50 40 Frequency 30 20 10 0 Term
Results ISAT Matching Cirriculum dbskills msoffice ooprog visualbasic webdev Not Matched
Results Non ISAT Curriculum android ERP ios java jquery mysql oracle perl php python ror ruby sharepoint unix Not Matched
Conclusions Summary VB is OUT JAVA is IN Stress web technology Web application development Database skills Oracle Microsoft Office necessity Unix systems Business technology classes