How will Big Data help educational institutions?
- Students’ voluminous data are easily captured
in all its volumes on an ongoing basis.
- Data can be studied for the shortest time frame.
Even intra-day analysis is possible. This shortens time to action. Prompt,
proactive action is possible.
- Study
patterns of students can be documented and examined on a historic basis.
- Predicting
Student Performance. Rating them - Which students are slow in tasks assigned?
Who are low performers and least performers?
- Drawing
up a Risk Matrix for Cohorts.
- LP (Low Performing) student needing help some online help or offsite.
- A
student in classroom session or on online learning: Is there disinterestedness, boredom visible? Is there frustration creeping in?
- How
often and in what manner do students use educational software? (Blackboard,
EBSCO, Turn-it-in, any internal intranet?) When do they really submit; the
pattern of submissions.
- What
is the inventory of faculty skills?
- Predicting student progression.
- What
courses and pedagogical modes attract students?
- Which
courses and pedagogical modes deter students?
- Patterns in enrollment.
- Deciphering patterns in student progression.
- Analysis of student dropout ratios and causative factors.
- Student retention trends.
- Predictive models using this type of unconventional data to
assess teaching risk.
- Knowing
and monitoring the opinion and attitude of the students and stakeholders as opinions,
feelings and attitudes about the EI, as discussed on the world wide web.
- Developing
a sentiment analysis tool to monitor student reflections.
- Monitoring
social platforms and social media websites. Reconnaissance of the social
sphere, including social networks, blogs, Facebook and twitter and other
relevant sites.
- Leveraging
on valuable feedback and insights to improve offerings and services.
- Student
profiling to suit personalization.
- Data
would reveal the student interests.
- Using
student data for cluster analysis
- Student’s
propensity towards a certain subject can be measured.
- Data
from online usage- from cookies, URL and software metrics – could to identify
which online channels the students are using and what they are using them for.
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