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Regression Analysis

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Submitted By adnanshezan
Words 1445
Pages 6
A Term Paper
On
BUSINESS STATISTICS 1

Submitted To

Dr. Md. Abul Kalam Azad
Associate Professor
Department of Marketing
University of Dhaka

Submitted By

Group Name: “ORACLES”
Section: B
Department of Marketing (17th Batch)
University of Dhaka

Date of Submission: 12- 04-2012

Group profile

“ORACLES”

| Roll No. |NAME |
|42 | Imran Hosen |
| | |
|74 |Zerin Momtaz Chowdhury |
| | |
|106 |Toufiqul Islam |
| | |
|134 |Antara Dey Sarker |
| | |
|158

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