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Bibliographic Details
Main Authors: Su, Wentao, Duan, Weitao
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2308.05945
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author Su, Wentao
Duan, Weitao
author_facet Su, Wentao
Duan, Weitao
contents The network effect, wherein one user's activity impacts another user, is common in social network platforms. Many new features in social networks are specifically designed to create a network effect, enhancing user engagement. For instance, content creators tend to produce more when their articles and posts receive positive feedback from followers. This paper discusses a new cluster-level experimentation methodology for measuring creator-side metrics in the context of A/B experiments. The methodology is designed to address cases where the experiment randomization unit and the metric measurement unit differ. It is a crucial part of LinkedIn's overall strategy to foster a robust creator community and ecosystem. The method is developed based on widely-cited research at LinkedIn but significantly improves the efficiency and flexibility of the clustering algorithm. This improvement results in a stronger capability for measuring creator-side metrics and an increased velocity for creator-related experiments.
format Preprint
id arxiv_https___arxiv_org_abs_2308_05945
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Improving Ego-Cluster for Network Effect Measurement
Su, Wentao
Duan, Weitao
Social and Information Networks
Methodology
The network effect, wherein one user's activity impacts another user, is common in social network platforms. Many new features in social networks are specifically designed to create a network effect, enhancing user engagement. For instance, content creators tend to produce more when their articles and posts receive positive feedback from followers. This paper discusses a new cluster-level experimentation methodology for measuring creator-side metrics in the context of A/B experiments. The methodology is designed to address cases where the experiment randomization unit and the metric measurement unit differ. It is a crucial part of LinkedIn's overall strategy to foster a robust creator community and ecosystem. The method is developed based on widely-cited research at LinkedIn but significantly improves the efficiency and flexibility of the clustering algorithm. This improvement results in a stronger capability for measuring creator-side metrics and an increased velocity for creator-related experiments.
title Improving Ego-Cluster for Network Effect Measurement
topic Social and Information Networks
Methodology
url https://arxiv.org/abs/2308.05945