Learning from big data
In the digital age, data is generated at an exponential rate due to the increasing trend of user-generated content and social networks. A lot of corporation are making use of this data set in order to track, understand, and predict outcomes in a wide range of applications and industries such as hea...
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sg-ntu-dr.10356-638602023-07-07T17:46:12Z Learning from big data Le, Trung Hieu Tan Yap Peng School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Computer hardware, software and systems In the digital age, data is generated at an exponential rate due to the increasing trend of user-generated content and social networks. A lot of corporation are making use of this data set in order to track, understand, and predict outcomes in a wide range of applications and industries such as healthcare, commerce, education, and art. Therefore, big data analytics has become an increasingly popular trend since it enables the discovery of useful knowledge from complex data sets. However, the application of big data analytic is still very much limited in education. There are large quantities of data generated daily within big educational institutions like universities, polytechnic, junior college, high school, etc…. They can come from student’s submission of homework/assignment/report, intranet email communication, download/view of lecture materials (notes, video recordings). The objective of this project is to develop, through collecting large data input, an effective way to better assess academic performance of students. The project will start with a student performance estimation model which takes in various parameters and predict the possible outcome based on certain criteria. Bachelor of Engineering 2015-05-19T07:44:19Z 2015-05-19T07:44:19Z 2015 2015 Final Year Project (FYP) http://hdl.handle.net/10356/63860 en Nanyang Technological University 50 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering::Computer hardware, software and systems Le, Trung Hieu Learning from big data |
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In the digital age, data is generated at an exponential rate due to the increasing trend of user-generated content and social networks. A lot of corporation are making use of this data set in order to track, understand, and predict outcomes in a wide range of applications and industries such as healthcare, commerce, education, and art. Therefore, big data analytics has become an increasingly popular trend since it enables the discovery of useful knowledge from complex data sets. However, the application of big data analytic is still very much limited in education. There are large quantities of data generated daily within big educational institutions like universities, polytechnic, junior college, high school, etc…. They can come from student’s submission of homework/assignment/report, intranet email communication, download/view of lecture materials (notes, video recordings). The objective of this project is to develop, through collecting large data input, an effective way to better assess academic performance of students. The project will start with a student performance estimation model which takes in various parameters and predict the possible outcome based on certain criteria. |
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Tan Yap Peng |
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Tan Yap Peng Le, Trung Hieu |
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Final Year Project |
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Le, Trung Hieu |
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Le, Trung Hieu |
title |
Learning from big data |
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Learning from big data |
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Learning from big data |
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Learning from big data |
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Learning from big data |
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learning from big data |
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2015 |
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http://hdl.handle.net/10356/63860 |
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1772825758321868800 |