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Optimizing Impression Counts for Outdoor Advertising

conference contribution
posted on 2024-10-31, 21:04 authored by Yipeng Zhang, Yuchen Li, Zhifeng Bao, Songsong Mo, Ping Zhang
In this paper we propose and study the problem of optimizing the influence of outdoor advertising (ad) when impression counts are taken into consideration. Given a database U of billboards, each of which has a location and a non-uniform cost, a trajectory database T and a budget B, it aims to find a set of billboards that has the maximum influence under the budget. In line with the advertising consumer behavior studies, we adopt the logistic function to take into account the impression counts of an ad (placed at different billboards) to a user trajectory when defining the influence measurement. However, this poses two challenges: (1) our problem is NP-hard to approximate within a factor of O(|T|1-ε) for any ε>0 in polynomial time; (2) the influence measurement is non-submodular, which means a straightforward greedy approach is not applicable. Therefore, we propose a tangent line based algorithm to compute a submodular function to estimate the upper bound of influence. Henceforth, we introduce a branch-and-bound framework with a θ-termination condition, achieving θ2/(1 - 1/e) approximation ratio. However, this framework is time-consuming when |U| is huge. Thus, we further optimize it with a progressive pruning upper bound estimation approach which achieves θ2/(1 - 1/e - ε) approximation ratio and significantly decreases the running-time. We conduct the experiments on real-world billboard and trajectory datasets, and show that the proposed approaches outperform the baselines by 95% in effectiveness. Moreover, the optimized approach is around two orders of magnitude faster than the original framework.

Funding

Continuous and summarised search over evolving heterogeneous data

Australian Research Council

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Continuous intent tracking for virtual assistance using big contextual data

Australian Research Council

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History

Related Materials

  1. 1.
    DOI - Is published in 10.1145/3292500.3330829
  2. 2.
    ISBN - Is published in 9781450362016 (urn:isbn:9781450362016)

Start page

1205

End page

1215

Total pages

11

Outlet

Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (KDD 2019)

Name of conference

25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (KDD 2019)

Publisher

ACM

Place published

New York, USA

Start date

2019-08-04

End date

2019-08-08

Language

English

Copyright

© 2019 Association for Computing Machinery

Former Identifier

2006094744

Esploro creation date

2020-06-22

Fedora creation date

2019-12-02

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