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Autores principales: Kim, Alex, Huang, Jia, Monarch, Rob, Kwac, Jerry, Kamath, Anikesh, Khurd, Parmeshwar, Thiyagarajan, Kailash, Gu, Goodman
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2405.00029
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author Kim, Alex
Huang, Jia
Monarch, Rob
Kwac, Jerry
Kamath, Anikesh
Khurd, Parmeshwar
Thiyagarajan, Kailash
Gu, Goodman
author_facet Kim, Alex
Huang, Jia
Monarch, Rob
Kwac, Jerry
Kamath, Anikesh
Khurd, Parmeshwar
Thiyagarajan, Kailash
Gu, Goodman
contents Application developers advertise their Apps by creating product pages with App images, and bidding on search terms. It is then crucial for App images to be highly relevant with the search terms. Solutions to this problem require an image-text matching model to predict the quality of the match between the chosen image and the search terms. In this work, we present a novel approach to matching an App image to search terms based on fine-tuning a pre-trained LXMERT model. We show that compared to the CLIP model and a baseline using a Transformer model for search terms, and a ResNet model for images, we significantly improve the matching accuracy. We evaluate our approach using two sets of labels: advertiser associated (image, search term) pairs for a given application, and human ratings for the relevance between (image, search term) pairs. Our approach achieves 0.96 AUC score for advertiser associated ground truth, outperforming the transformer+ResNet baseline and the fine-tuned CLIP model by 8% and 14%. For human labeled ground truth, our approach achieves 0.95 AUC score, outperforming the transformer+ResNet baseline and the fine-tuned CLIP model by 16% and 17%.
format Preprint
id arxiv_https___arxiv_org_abs_2405_00029
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic Creative Selection with Cross-Modal Matching
Kim, Alex
Huang, Jia
Monarch, Rob
Kwac, Jerry
Kamath, Anikesh
Khurd, Parmeshwar
Thiyagarajan, Kailash
Gu, Goodman
Computer Vision and Pattern Recognition
Information Retrieval
Application developers advertise their Apps by creating product pages with App images, and bidding on search terms. It is then crucial for App images to be highly relevant with the search terms. Solutions to this problem require an image-text matching model to predict the quality of the match between the chosen image and the search terms. In this work, we present a novel approach to matching an App image to search terms based on fine-tuning a pre-trained LXMERT model. We show that compared to the CLIP model and a baseline using a Transformer model for search terms, and a ResNet model for images, we significantly improve the matching accuracy. We evaluate our approach using two sets of labels: advertiser associated (image, search term) pairs for a given application, and human ratings for the relevance between (image, search term) pairs. Our approach achieves 0.96 AUC score for advertiser associated ground truth, outperforming the transformer+ResNet baseline and the fine-tuned CLIP model by 8% and 14%. For human labeled ground truth, our approach achieves 0.95 AUC score, outperforming the transformer+ResNet baseline and the fine-tuned CLIP model by 16% and 17%.
title Automatic Creative Selection with Cross-Modal Matching
topic Computer Vision and Pattern Recognition
Information Retrieval
url https://arxiv.org/abs/2405.00029