Swinburne
Browse

Know your customer: computing k-most promising products for targeted marketing

Download (691.81 kB)
journal contribution
posted on 2024-07-09, 22:48 authored by Md Saiful Islam, Chengfei LiuChengfei Liu
The advancement of World Wide Web has revolutionized the way the manufacturers can do business. The manufacturers can collect customer preferences for products and product features from their sales and other product-related Web sites to enter and sustain in the global market. For example, the manufactures can make intelligent use of these customer preference data to decide on which products should be selected for targeted marketing. However, the selected products must attract as many customers as possible to increase the possibility of selling more than their respective competitors. This paper addresses this kind of product selection problem. That is, given a database of existing products P from the competitors, a set of company’s own products Q, a dataset C of customer preferences and a positive integer k, we want to find k-most promising products (k-MPP) from Q with maximum expected number of total customers for targeted marketing. We model k-MPP query and propose an algorithmic framework for processing such query and its variants. Our framework utilizes grid-based data partitioning scheme and parallel computing techniques to realize k-MPP query. The effectiveness and efficiency of the framework are demonstrated by conducting extensive experiments with real and synthetic datasets.

Funding

ARC | DP140103499

History

Available versions

PDF (Accepted manuscript)

ISSN

0949-877X

Journal title

VLDB Journal

Volume

25

Issue

4

Pagination

545-570

Publisher

Springer

Copyright statement

Copyright © Springer-Verlag Berlin Heidelberg 2016. The accepted manuscript is reproduced in accordance with the copyright policy of the publisher. The final version of the publication is available at Springer via https://doi.org/10.1007/s00778-016-0428-3.

Language

eng

Usage metrics

    Publications

    Keywords

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC