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Hauptverfasser: Ba, Shan, Garg, Shilpa, Agarwal, Jitendra, Zhao, Hanyue
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2501.13293
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author Ba, Shan
Garg, Shilpa
Agarwal, Jitendra
Zhao, Hanyue
author_facet Ba, Shan
Garg, Shilpa
Agarwal, Jitendra
Zhao, Hanyue
contents In this paper, we address the challenges in running enterprise experimentation with hierarchical entities and present the methodologies behind the implementation of the Enterprise Experimentation Platform (EEP) at LinkedIn, which plays a pivotal role in delivering an intelligent, scalable, and reliable experimentation experience to optimize performance across all LinkedIn's enterprise products. We start with an introduction to the hierarchical entity relationships of the enterprise products and how such complex entity structure poses challenges to experimentation. We then delve into the details of our solutions for EEP including taxonomy based design setup with multiple entities, analysis methodologies in the presence of hierarchical entities, and advanced variance reduction techniques, etc. Recognizing the hierarchical ramping patterns inherent in enterprise experiments, we also propose a two-level Sample Size Ratio Mismatch (SSRM) detection methodology. This approach addresses SSRM at both the randomization unit and analysis unit levels, bolstering the internal validity and trustworthiness of analysis results within EEP. In the end, we discuss implementations and examine the business impacts of EEP through practical examples.
format Preprint
id arxiv_https___arxiv_org_abs_2501_13293
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enterprise Experimentation with Hierarchical Entities
Ba, Shan
Garg, Shilpa
Agarwal, Jitendra
Zhao, Hanyue
Methodology
In this paper, we address the challenges in running enterprise experimentation with hierarchical entities and present the methodologies behind the implementation of the Enterprise Experimentation Platform (EEP) at LinkedIn, which plays a pivotal role in delivering an intelligent, scalable, and reliable experimentation experience to optimize performance across all LinkedIn's enterprise products. We start with an introduction to the hierarchical entity relationships of the enterprise products and how such complex entity structure poses challenges to experimentation. We then delve into the details of our solutions for EEP including taxonomy based design setup with multiple entities, analysis methodologies in the presence of hierarchical entities, and advanced variance reduction techniques, etc. Recognizing the hierarchical ramping patterns inherent in enterprise experiments, we also propose a two-level Sample Size Ratio Mismatch (SSRM) detection methodology. This approach addresses SSRM at both the randomization unit and analysis unit levels, bolstering the internal validity and trustworthiness of analysis results within EEP. In the end, we discuss implementations and examine the business impacts of EEP through practical examples.
title Enterprise Experimentation with Hierarchical Entities
topic Methodology
url https://arxiv.org/abs/2501.13293