Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system

Search engine marketing (SEM) is an important channel for the success of e-commerce. With the increasing scale of catalog items, designing an efficient modern industrial-level bidding system usually requires overcoming the following hurdles: 1. the relevant bidding features are of high sparsity, pre...

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Main Authors: Cheng Jie, Zigeng Wang, Da Xu, Wei Shen
Format: Article
Language:English
Published: Frontiers Media S.A. 2022-09-01
Series:Frontiers in Big Data
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fdata.2022.966982/full
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author Cheng Jie
Zigeng Wang
Da Xu
Wei Shen
author_facet Cheng Jie
Zigeng Wang
Da Xu
Wei Shen
author_sort Cheng Jie
collection DOAJ
description Search engine marketing (SEM) is an important channel for the success of e-commerce. With the increasing scale of catalog items, designing an efficient modern industrial-level bidding system usually requires overcoming the following hurdles: 1. the relevant bidding features are of high sparsity, preventing an accurate prediction of the performances of many ads. 2. the large volume of bidding requests induces a significant computation burden to offline and online serving. In this article, we introduce an end-to-end structure of a multi-objective bidding system for search engine marketing for Walmart e-commerce, which successfully handles tens of millions of bids each day. The system deals with multiple business demands by constructing an optimization model targeting a mixture of metrics. Moreover, the system extracts the vector representations of ads via the Transformer model. It leverages their geometric relation to building collaborative bidding predictions via clustering to address performance features' sparsity issues. We provide theoretical and numerical analyzes to discuss how we find the proposed system as a production-efficient solution.
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spelling doaj.art-52ffdd5e7a864838b6e62c794fa6ca872022-12-22T03:21:31ZengFrontiers Media S.A.Frontiers in Big Data2624-909X2022-09-01510.3389/fdata.2022.966982966982Multi-objective cluster based bidding algorithm for E-commerce search engine marketing systemCheng JieZigeng WangDa XuWei ShenSearch engine marketing (SEM) is an important channel for the success of e-commerce. With the increasing scale of catalog items, designing an efficient modern industrial-level bidding system usually requires overcoming the following hurdles: 1. the relevant bidding features are of high sparsity, preventing an accurate prediction of the performances of many ads. 2. the large volume of bidding requests induces a significant computation burden to offline and online serving. In this article, we introduce an end-to-end structure of a multi-objective bidding system for search engine marketing for Walmart e-commerce, which successfully handles tens of millions of bids each day. The system deals with multiple business demands by constructing an optimization model targeting a mixture of metrics. Moreover, the system extracts the vector representations of ads via the Transformer model. It leverages their geometric relation to building collaborative bidding predictions via clustering to address performance features' sparsity issues. We provide theoretical and numerical analyzes to discuss how we find the proposed system as a production-efficient solution.https://www.frontiersin.org/articles/10.3389/fdata.2022.966982/fullclusteringintention embeddingSEM biddingmulti-objectiveoptimization
spellingShingle Cheng Jie
Zigeng Wang
Da Xu
Wei Shen
Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
Frontiers in Big Data
clustering
intention embedding
SEM bidding
multi-objective
optimization
title Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
title_full Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
title_fullStr Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
title_full_unstemmed Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
title_short Multi-objective cluster based bidding algorithm for E-commerce search engine marketing system
title_sort multi objective cluster based bidding algorithm for e commerce search engine marketing system
topic clustering
intention embedding
SEM bidding
multi-objective
optimization
url https://www.frontiersin.org/articles/10.3389/fdata.2022.966982/full
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AT zigengwang multiobjectiveclusterbasedbiddingalgorithmforecommercesearchenginemarketingsystem
AT daxu multiobjectiveclusterbasedbiddingalgorithmforecommercesearchenginemarketingsystem
AT weishen multiobjectiveclusterbasedbiddingalgorithmforecommercesearchenginemarketingsystem