Multi-channel attribution modeling on user journeys

Publikation: Beiträge in SammelwerkenAufsätze in KonferenzbändenForschungbegutachtet

Standard

Multi-channel attribution modeling on user journeys. / Nottorf, Florian.
E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers. Hrsg. / Mohammad S. Obaidat; Joaquim Filipe. Springer New York LLC, 2014. S. 107-125 (Communications in Computer and Information Science; Band 456).

Publikation: Beiträge in SammelwerkenAufsätze in KonferenzbändenForschungbegutachtet

Harvard

Nottorf, F 2014, Multi-channel attribution modeling on user journeys. in MS Obaidat & J Filipe (Hrsg.), E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers. Communications in Computer and Information Science, Bd. 456, Springer New York LLC, S. 107-125. https://doi.org/10.1007/978-3-662-44788-8_7

APA

Nottorf, F. (2014). Multi-channel attribution modeling on user journeys. In M. S. Obaidat, & J. Filipe (Hrsg.), E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers (S. 107-125). (Communications in Computer and Information Science; Band 456). Springer New York LLC. https://doi.org/10.1007/978-3-662-44788-8_7

Vancouver

Nottorf F. Multi-channel attribution modeling on user journeys. in Obaidat MS, Filipe J, Hrsg., E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers. Springer New York LLC. 2014. S. 107-125. (Communications in Computer and Information Science). doi: 10.1007/978-3-662-44788-8_7

Bibtex

@inbook{15772183968e4e78b21a1ff0edc62cb3,
title = "Multi-channel attribution modeling on user journeys",
abstract = "Consumers are often confronted with multiple types of online advertising before they click on advertisements or make a purchase. The respective attribution of the success of the companies{\textquoteright} marketing activities leads to a sophisticated allocation process. We developed a new approach to (1) address consumers{\textquoteright} buying decision processes, (2) to account for the effects of multiple online advertising channels, and (3) consequently attribute the success of marketing activities more realistically than current management heuristics do. For example, compared to standardized metrics, we found paid search advertising to be overestimated and retargeting display advertising to be underestimated. We further found that the use of a Bayesian mixture of normals approach is useful for considering heterogeneity in the individual propensity of consumers to purchase; for the majority of consumers (more than 90%), repeated clicks on advertisements decrease their probability of purchasing. In contrast with this segment, we found a smaller segment of consumers (nearly 10%) whose clicks on advertisements increase conversion probabilities. Our approaches will help managers to better understand consumer online search and buying behavior over time and to allocate financial spending more efficiently across multiple types of online advertising.",
keywords = "Bayesian analysis, Clickstream data, Consumer behavior, Mixture of normals, Online advertising, Purchasing probabilities, User-journey, Business informatics",
author = "Florian Nottorf",
year = "2014",
doi = "10.1007/978-3-662-44788-8_7",
language = "English",
series = "Communications in Computer and Information Science",
publisher = "Springer New York LLC",
pages = "107--125",
editor = "Obaidat, {Mohammad S.} and Joaquim Filipe",
booktitle = "E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers",
address = "United States",

}

RIS

TY - CHAP

T1 - Multi-channel attribution modeling on user journeys

AU - Nottorf, Florian

PY - 2014

Y1 - 2014

N2 - Consumers are often confronted with multiple types of online advertising before they click on advertisements or make a purchase. The respective attribution of the success of the companies’ marketing activities leads to a sophisticated allocation process. We developed a new approach to (1) address consumers’ buying decision processes, (2) to account for the effects of multiple online advertising channels, and (3) consequently attribute the success of marketing activities more realistically than current management heuristics do. For example, compared to standardized metrics, we found paid search advertising to be overestimated and retargeting display advertising to be underestimated. We further found that the use of a Bayesian mixture of normals approach is useful for considering heterogeneity in the individual propensity of consumers to purchase; for the majority of consumers (more than 90%), repeated clicks on advertisements decrease their probability of purchasing. In contrast with this segment, we found a smaller segment of consumers (nearly 10%) whose clicks on advertisements increase conversion probabilities. Our approaches will help managers to better understand consumer online search and buying behavior over time and to allocate financial spending more efficiently across multiple types of online advertising.

AB - Consumers are often confronted with multiple types of online advertising before they click on advertisements or make a purchase. The respective attribution of the success of the companies’ marketing activities leads to a sophisticated allocation process. We developed a new approach to (1) address consumers’ buying decision processes, (2) to account for the effects of multiple online advertising channels, and (3) consequently attribute the success of marketing activities more realistically than current management heuristics do. For example, compared to standardized metrics, we found paid search advertising to be overestimated and retargeting display advertising to be underestimated. We further found that the use of a Bayesian mixture of normals approach is useful for considering heterogeneity in the individual propensity of consumers to purchase; for the majority of consumers (more than 90%), repeated clicks on advertisements decrease their probability of purchasing. In contrast with this segment, we found a smaller segment of consumers (nearly 10%) whose clicks on advertisements increase conversion probabilities. Our approaches will help managers to better understand consumer online search and buying behavior over time and to allocate financial spending more efficiently across multiple types of online advertising.

KW - Bayesian analysis

KW - Clickstream data

KW - Consumer behavior

KW - Mixture of normals

KW - Online advertising

KW - Purchasing probabilities

KW - User-journey

KW - Business informatics

UR - http://www.scopus.com/inward/record.url?scp=84908541988&partnerID=8YFLogxK

U2 - 10.1007/978-3-662-44788-8_7

DO - 10.1007/978-3-662-44788-8_7

M3 - Article in conference proceedings

AN - SCOPUS:84908541988

T3 - Communications in Computer and Information Science

SP - 107

EP - 125

BT - E-Business and Telecommunications - International Joint Conference, ICETE 2013, Revised Selected Papers

A2 - Obaidat, Mohammad S.

A2 - Filipe, Joaquim

PB - Springer New York LLC

ER -

DOI