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Page 1: Educational Data Mining in relation to Educational Statistics of Nepal

EDUCATIONAL DATA MINING

In Relation To Educational Statistics Of Nepal

Final Presentation

Presenters:Roshan Bhandari (16226)Sijan Bhandari (16236)Subit Raj Pokharel (16237)Sujit Maharjan (16239)

Supervisor:Bibha Sthapit(Lecturer, Pulchowk Campus)

Co-Supervisor:Anjesh Tuladhar(COO, YIPL)

Page 2: Educational Data Mining in relation to Educational Statistics of Nepal

35 000 Schools50 billion + budget

20 parameters2 times a year

400 + NGOs and INGOs

Statistics

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Department of Education

Office of Controller of Examination

“Education for all”

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Problem ???

Reports Not Accessible

Unmanaged and Unformatted

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2007Schools - 29448Stds - 6533392

2008Schools - 31156Stds - 6964553

2009Schools - 32130Stds - 7295433

2010Schools - 33160Stds - 7463793

2011Schools - 34361Stds - 7444134

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Educational Data Mining

• New methodology of manipulating educational data.

• Modern methodology started since 2008.

• In this regard, we are the first people to introduce Educational Data Mining to Nepal

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What we have done ??

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Block Diagram

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API For Developers

District wise number of school in the year 2007

http://edm.hamroschool.org/numschool/2007

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API For Developers

Parameter values of Kaski for 2011

http://edm.hamroschool.org/kaski/2011

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Map

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Charts

Districts with max. Dropout Rate

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Educational Development Index (EDI)

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Map

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Educational Development Index for Individual

District

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Comparison of DistrictsYear wise Pupil Teacher Ratio Comparison

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Cluster Analysis

Year2066 Year2067 Year20681 24.08481 26.19629 25.746092 53.66839 50.65694 52.70283

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Government 2785

private 87

Cluster Analysis

Government 2872

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Prediction & Parameter Relationships● Correlation Coefficient● Least Square Regression● Standard Error of Estimate● Multiple Regression

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Multiple Regression

Our proposed models:Gross Enrollment ModelGirls Enrollment ModelDropout Rate Model:

○ Dropout rate = 53.65 + 0.4644 * Enrolled Passed - 5.455*GPI - 0.084*Unqualified Teacher

○ Standard Error = 2.87

○ R2 = 80.73 %

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Schools Classification• Tried to classify schools based on the

performance of the schools

• Six subjects, average marks of school and pass out data are used to classify schools

• ID3 algorithm has been used to construct Decision Tree.

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Decision Tree

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Enhancement• More parameter can be included to get more

accurate results• More data can be provided by collaborating

with DoE• A real time data update and feeding

mechanism can be built to make system more realistic.

• More data mining techniques can be used to extract core information.

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EDIClustering

RegressionClassification

Conclusion

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Tools Used

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Thank You