Prediction and Optimal Scheduling of Advertisements in Linear Television

Advertising is a crucial component of marketing and an important way for companies to raise awareness of goods and services in the marketplace. Advertising campaigns are designed to convey a marketing image or message to an audience of potential consumers and television commercials can be an effecti...

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Hauptverfasser: Panaggio, Mark J, Fok, Pak-Wing, Bhatt, Ghan S, Burhoe, Simon, Capps, Michael, Edholm, Christina J, Moustaid, Fadoua El, Emerson, Tegan, Estock, Star-Lena, Gold, Nathan, Halabi, Ryan, Houser, Madelyn, Kramer, Peter R, Lee, Hsuan-Wei, Li, Qingxia, Li, Weiqiang, Lu, Dan, Qian, Yuzhou, Rossi, Louis F, Shutt, Deborah, Yang, Vicky Chuqiao, Zhou, Yingxiang
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creator Panaggio, Mark J
Fok, Pak-Wing
Bhatt, Ghan S
Burhoe, Simon
Capps, Michael
Edholm, Christina J
Moustaid, Fadoua El
Emerson, Tegan
Estock, Star-Lena
Gold, Nathan
Halabi, Ryan
Houser, Madelyn
Kramer, Peter R
Lee, Hsuan-Wei
Li, Qingxia
Li, Weiqiang
Lu, Dan
Qian, Yuzhou
Rossi, Louis F
Shutt, Deborah
Yang, Vicky Chuqiao
Zhou, Yingxiang
description Advertising is a crucial component of marketing and an important way for companies to raise awareness of goods and services in the marketplace. Advertising campaigns are designed to convey a marketing image or message to an audience of potential consumers and television commercials can be an effective way of transmitting these messages to a large audience. In order to meet the requirements for a typical advertising order, television content providers must provide advertisers with a predetermined number of "impressions" in the target demographic. However, because the number of impressions for a given program is not known a priori and because there are a limited number of time slots available for commercials, scheduling advertisements efficiently can be a challenging computational problem. In this case study, we compare a variety of methods for estimating future viewership patterns in a target demographic from past data. We also present a method for using those predictions to generate an optimal advertising schedule that satisfies campaign requirements while maximizing advertising revenue.
doi_str_mv 10.48550/arxiv.1608.07305
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Statistics - Applications
title Prediction and Optimal Scheduling of Advertisements in Linear Television
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