Determination of Drivers of Stock-Out Performance of Retail Stores using Data Mining Techniques
Khalid Usman
Research Fest 2008
This project utilizes data mining techniques to determine the drivers of stock-out performance. Best performing and worst performing clusters of stores were identified using data clustering techniques. Furthermore, Logistic regression and multiple ordinary-least-squares regression were used to gain further insights and quantify the drivers of stock-outs.
22-May-08, Session 1 (8:30-9:30)
Comments (2)
You need to log in, in order to post comments. If you don’t have an account yet, sign up now!
- Created
- June 20, 2008 09:53
- Category
- Tags
- License
- All Rights Reserved (What is this?)
- Formats
- H.264 Video (mp4)
- Additional Files
- Viewed
- 28491 times
More from ResearchFest 2008
The Impact and Dynamics of Centrali...
Added almost 5 years ago | 00:21:50 | 19749 views
Inventory Optimization in a Retail ...
Added almost 5 years ago | 00:18:06 | 21669 views
Impact of Lead Time on Truckload Tr...
Added almost 5 years ago | 00:00:00 | 30932 views
An Engineering Approach to Improvin...
Added almost 5 years ago | 00:22:05 | 21246 views
Transport Mode and Network Architec...
Added almost 5 years ago | 00:23:56 | 16659 views
Leveraging Risk Management in the S...
Added almost 5 years ago | 00:12:40 | 26710 views

i want to know the stock ou form
Posted over 4 years by Anonymous User
At TCLogic, we often describe this process as determining the drivers of inventory performance. For some organizations it may be the variance in lead time, or it may be the variance in demand. For others, it could be something entirely different. The underlying issue is discovering the drivers. Without the use of an advanced inventory optimization tool, it can be a daunting task. While this process is very data intensive, it can provide an organization with advanced inventory planning techniques that reduce inventory, improve service levels and add significant value to the bottom line. Visit http://www.tclogic.com for more information.
Posted 4 years by tclogic