Login

Login
Welcome:
Guest

Search for:


Browse:

Bannner: Aslib individual membership.
 
Journal search
Journal cover: Online Information Review

Online Information Review

ISSN: 1468-4527

Online from: 1977

Subject Area: Library and Information Studies

Content: Latest Issue | icon: RSS Latest Issue RSS | Previous Issues

Options: To add Favourites and Table of Contents Alerts please take a Emerald profile

Previous article.Icon: Print.Table of Contents.Next article.Icon: .

An application of web-based data mining: selling strategies for online auctions


Document Information:
Title:An application of web-based data mining: selling strategies for online auctions
Author(s):Yanbin Tu, (Department of Marketing, School of Business, Robert Morris University, Moon Township, Pennsylvania, USA)
Citation:Yanbin Tu, (2008) "An application of web-based data mining: selling strategies for online auctions", Online Information Review, Vol. 32 Iss: 2, pp.147 - 162
Keywords:Auctions, Data collection, Selling methods
Article type:Technical paper
DOI:10.1108/14684520810879791 (Permanent URL)
Publisher:Emerald Group Publishing Limited
Abstract:

Purpose – This study aims to introduce an application of web-based data mining that integrates online data collection and data mining in selling strategies for online auctions. This study seeks to illustrate the process of spider online data collection from eBay and the application of the classification and regression tree (CART) in constructing effective selling strategies.

Design/methodology/approach – After developing a prototype of web-based data mining, the four steps of spider online data collection and CART data mining are shown. A business dataset from eBay is collected, and the application to derive effective selling strategies for online auctions is used.

Findings – In the web-based data-mining application the spiders can effectively and efficiently collect online auction data from the internet, and the CART model provides sellers with effective selling strategies. By using expected auction prices with the classification and regression trees, sellers can integrate their two primary goals, i.e. auction success and anticipated prices, in their selling strategies for online auctions.

Practical implications – This study provides sellers with a useful tool to construct effective selling strategies by taking advantage of web-based data mining. These effective selling strategies will help improve their online auction performance.

Originality/value – This study contributes to the literature by providing an innovative tool for collecting online data and for constructing effective selling strategies, which are important for the growth of electronic marketplaces.



Fulltext Options:

Login

Login

Existing customers: login
to access this document

Login


- Forgot password?

- Athens/Institutional login

Purchase

Purchase

Downloadable; Printable; Owned
HTML, PDF (263kb)Purchase

To purchase this item please login or register.

Login


- Forgot password?

Recommend to your librarian

Complete and print this form to request this document from your librarian


Marked list

Bookmark & share

Reprints & permissions

© Emerald Group Publishing Limited  |  Copyright information  |  Site policies  |  Cookie information
.