GraphEx: A Graph-based Extraction Method for Advertiser Keyphrase Recommendation
- URL: http://arxiv.org/abs/2409.03140v3
- Date: Sat, 25 Jan 2025 01:47:28 GMT
- Title: GraphEx: A Graph-based Extraction Method for Advertiser Keyphrase Recommendation
- Authors: Ashirbad Mishra, Soumik Dey, Marshall Wu, Jinyu Zhao, He Yu, Kaichen Ni, Binbin Li, Kamesh Madduri,
- Abstract summary: GraphEx is an innovative graph-based approach that recommends keyphrases to sellers using extraction of token permutations from item titles.
It supports near real-time inferencing in resource-constrained production environments and scales effectively for billions of items.
- Score: 3.167259972777881
- License:
- Abstract: Online sellers and advertisers are recommended keyphrases for their listed products, which they bid on to enhance their sales. One popular paradigm that generates such recommendations is Extreme Multi-Label Classification (XMC), which involves tagging/mapping keyphrases to items. We outline the limitations of using traditional item-query based tagging or mapping techniques for keyphrase recommendations on E-Commerce platforms. We introduce GraphEx, an innovative graph-based approach that recommends keyphrases to sellers using extraction of token permutations from item titles. Additionally, we demonstrate that relying on traditional metrics such as precision/recall can be misleading in practical applications, thereby necessitating a combination of metrics to evaluate performance in real-world scenarios. These metrics are designed to assess the relevance of keyphrases to items and the potential for buyer outreach. GraphEx outperforms production models at eBay, achieving the objectives mentioned above. It supports near real-time inferencing in resource-constrained production environments and scales effectively for billions of items.
Related papers
- Middleman Bias in Advertising: Aligning Relevance of Keyphrase Recommendations with Search [4.275764895529604]
We describe the shortcomings of training relevance filter models on biased click/sales signals.
We re-conceptualize advertiser keyphrase relevance as interaction between two dynamical systems.
We discuss the bias of search relevance systems and the need to align advertiser keyphrases with search relevance signals.
arXiv Detail & Related papers (2025-01-31T19:28:26Z) - CoActionGraphRec: Sequential Multi-Interest Recommendations Using Co-Action Graphs [4.031699584957737]
eBay's data sparsity exceeds other e-commerce sites by an order of magnitude.
We propose a text based two-tower deep learning model (Item Tower and User Tower) utilizing co-action graph layers.
For the Item Tower, we represent each item using its co-action items to capture collaborative signals in a co-action graph that is fully leveraged by the graph neural network component.
arXiv Detail & Related papers (2024-10-15T10:11:18Z) - Graphite: A Graph-based Extreme Multi-Label Short Text Classifier for Keyphrase Recommendation [3.4693396519698108]
Keyphrase Recommendation is a pivotal problem in advertising and e-commerce.
Traditional neural network models are either infeasible or have slower inference due to large label spaces.
We present, a graph-based model that provides real-time keyphrase recommendations that are on par with standard text classification models.
arXiv Detail & Related papers (2024-07-29T23:41:26Z) - Hypergraph Enhanced Knowledge Tree Prompt Learning for Next-Basket
Recommendation [50.55786122323965]
Next-basket recommendation (NBR) aims to infer the items in the next basket given the corresponding basket sequence.
HEKP4NBR transforms the knowledge graph (KG) into prompts, namely Knowledge Tree Prompt (KTP), to help PLM encode the Out-Of-Vocabulary (OOV) item IDs.
A hypergraph convolutional module is designed to build a hypergraph based on item similarities measured by an MoE model from multiple aspects.
arXiv Detail & Related papers (2023-12-26T02:12:21Z) - ExtractGPT: Exploring the Potential of Large Language Models for Product Attribute Value Extraction [52.14681890859275]
E-commerce platforms require structured product data in the form of attribute-value pairs.
BERT-based extraction methods require large amounts of task-specific training data.
This paper explores using large language models (LLMs) as a more training-data efficient and robust alternative.
arXiv Detail & Related papers (2023-10-19T07:39:00Z) - Multi-task Item-attribute Graph Pre-training for Strict Cold-start Item
Recommendation [71.5871100348448]
ColdGPT models item-attribute correlations into an item-attribute graph by extracting fine-grained attributes from item contents.
ColdGPT transfers knowledge into the item-attribute graph from various available data sources, i.e., item contents, historical purchase sequences, and review texts of the existing items.
Extensive experiments show that ColdGPT consistently outperforms the existing SCS recommenders by large margins.
arXiv Detail & Related papers (2023-06-26T07:04:47Z) - Product Information Extraction using ChatGPT [69.12244027050454]
This paper explores the potential of ChatGPT for extracting attribute/value pairs from product descriptions.
Our results show that ChatGPT achieves a performance similar to a pre-trained language model but requires much smaller amounts of training data and computation for fine-tuning.
arXiv Detail & Related papers (2023-06-23T09:30:01Z) - Representation Learning for Resource-Constrained Keyphrase Generation [78.02577815973764]
We introduce salient span recovery and salient span prediction as guided denoising language modeling objectives.
We show the effectiveness of the proposed approach for low-resource and zero-shot keyphrase generation.
arXiv Detail & Related papers (2022-03-15T17:48:04Z) - A Joint Learning Approach based on Self-Distillation for Keyphrase
Extraction from Scientific Documents [29.479331909227998]
Keyphrase extraction is the task of extracting a small set of phrases that best describe a document.
Most existing benchmark datasets for the task typically have limited numbers of annotated documents.
We propose a simple and efficient joint learning approach based on the idea of self-distillation.
arXiv Detail & Related papers (2020-10-22T18:36:31Z) - COOKIE: A Dataset for Conversational Recommendation over Knowledge
Graphs in E-commerce [64.95907840457471]
We present a new dataset for conversational recommendation over knowledge graphs in e-commerce platforms called COOKIE.
The dataset is constructed from an Amazon review corpus by integrating both user-agent dialogue and custom knowledge graphs for recommendation.
arXiv Detail & Related papers (2020-08-21T00:11:31Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.