Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising

Online advertising is becoming an important direction in the advertising industry with its strengths in diverse users, strong interactions, real-time feedback, and expandability. Online advertisement (Ads) can show great marketing ability by processing data from multiple channels to convey informati...

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Main Authors: Kyungwon Kim, Eun Kwon, Jaram Park
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9316682/
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spelling doaj-66651e8310af4b87ac6086018555fb4b2021-03-30T15:21:39ZengIEEEIEEE Access2169-35362021-01-0199812982110.1109/ACCESS.2021.30498279316682Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online AdvertisingKyungwon Kim0https://orcid.org/0000-0001-6530-8426Eun Kwon1Jaram Park2https://orcid.org/0000-0003-2737-8647AI Center, Samsung Research, Samsung Electronics Seoul R&D Campus, Seoul, Republic of KoreaAI Center, Samsung Research, Samsung Electronics Seoul R&D Campus, Seoul, Republic of KoreaAI Center, Samsung Research, Samsung Electronics Seoul R&D Campus, Seoul, Republic of KoreaOnline advertising is becoming an important direction in the advertising industry with its strengths in diverse users, strong interactions, real-time feedback, and expandability. Online advertisement (Ads) can show great marketing ability by processing data from multiple channels to convey information, understanding what users want, and approaching them easily. Moreover, predicting the click-through rate (CTR) can increase advertisement revenue and user satisfaction. However, advertising data contains many features, and the amount is growing rapidly. This can be alleviated through the segmentation of users with similar interests. We assumed that the change of interest of a user could be predicted by other users' change of interest. More specifically, similar users will change their interest in a similar direction. On the basis of this idea, we proposed a novel model, the Deep User Segment Interest Network, to improve CTR prediction. We suggested three novel layers for improving performance: i) an individual interest extractor, ii) a segment interest extractor, and iii) a segment interest activation. These layers captures the latent interest of each user and creates the expressive interest representation of the segment by aggregating each user's interest. We conducted experiments using TaoBao data, which are a kind of real commercial data from an advertising platform, to confirm the CTR prediction improvement by reflecting the segment interest. The proposed algorithm obtained an AUC gain of 0.0029 with a behavior sequence length of 100. This performance exhibited the greatest improvement over other baselines, indicating the proposed method's potential contribution to business improvement.https://ieeexplore.ieee.org/document/9316682/Online advertisingclick-through rate predictionuser interestsegment interestgated recurrent unitsegment interest activation unit
collection DOAJ
language English
format Article
sources DOAJ
author Kyungwon Kim
Eun Kwon
Jaram Park
spellingShingle Kyungwon Kim
Eun Kwon
Jaram Park
Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
IEEE Access
Online advertising
click-through rate prediction
user interest
segment interest
gated recurrent unit
segment interest activation unit
author_facet Kyungwon Kim
Eun Kwon
Jaram Park
author_sort Kyungwon Kim
title Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
title_short Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
title_full Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
title_fullStr Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
title_full_unstemmed Deep User Segment Interest Network Modeling for Click-Through Rate Prediction of Online Advertising
title_sort deep user segment interest network modeling for click-through rate prediction of online advertising
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Online advertising is becoming an important direction in the advertising industry with its strengths in diverse users, strong interactions, real-time feedback, and expandability. Online advertisement (Ads) can show great marketing ability by processing data from multiple channels to convey information, understanding what users want, and approaching them easily. Moreover, predicting the click-through rate (CTR) can increase advertisement revenue and user satisfaction. However, advertising data contains many features, and the amount is growing rapidly. This can be alleviated through the segmentation of users with similar interests. We assumed that the change of interest of a user could be predicted by other users' change of interest. More specifically, similar users will change their interest in a similar direction. On the basis of this idea, we proposed a novel model, the Deep User Segment Interest Network, to improve CTR prediction. We suggested three novel layers for improving performance: i) an individual interest extractor, ii) a segment interest extractor, and iii) a segment interest activation. These layers captures the latent interest of each user and creates the expressive interest representation of the segment by aggregating each user's interest. We conducted experiments using TaoBao data, which are a kind of real commercial data from an advertising platform, to confirm the CTR prediction improvement by reflecting the segment interest. The proposed algorithm obtained an AUC gain of 0.0029 with a behavior sequence length of 100. This performance exhibited the greatest improvement over other baselines, indicating the proposed method's potential contribution to business improvement.
topic Online advertising
click-through rate prediction
user interest
segment interest
gated recurrent unit
segment interest activation unit
url https://ieeexplore.ieee.org/document/9316682/
work_keys_str_mv AT kyungwonkim deepusersegmentinterestnetworkmodelingforclickthroughratepredictionofonlineadvertising
AT eunkwon deepusersegmentinterestnetworkmodelingforclickthroughratepredictionofonlineadvertising
AT jarampark deepusersegmentinterestnetworkmodelingforclickthroughratepredictionofonlineadvertising
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