Making Large Language Models Better Knowledge Miners for Online Marketing with Progressive Prompting Augmentation
Chunjing Gan, Dan Yang, Binbin Hu, Ziqi Liu, Yue Shen, Zhiqiang Zhang,, Jinjie Gu, Jun Zhou, Guannan Zhang

TL;DR
This paper introduces PAIR, a progressive prompting framework that enhances large language models for constructing marketing-oriented knowledge graphs, addressing issues like relation control, prompt limitations, and deployment costs.
Contribution
The paper proposes a novel PAIR framework that improves LLM-based knowledge mining for marketing graphs through adaptive relation filtering and progressive entity expansion.
Findings
Effective relation filtering reduces noise in knowledge extraction.
Progressive prompting improves entity expansion accuracy.
LightPAIR achieves competitive performance with lower deployment costs.
Abstract
Nowadays, the rapid development of mobile economy has promoted the flourishing of online marketing campaigns, whose success greatly hinges on the efficient matching between user preferences and desired marketing campaigns where a well-established Marketing-oriented Knowledge Graph (dubbed as MoKG) could serve as the critical "bridge" for preference propagation. In this paper, we seek to carefully prompt a Large Language Model (LLM) with domain-level knowledge as a better marketing-oriented knowledge miner for marketing-oriented knowledge graph construction, which is however non-trivial, suffering from several inevitable issues in real-world marketing scenarios, i.e., uncontrollable relation generation of LLMs,insufficient prompting ability of a single prompt, the unaffordable deployment cost of LLMs. To this end, we propose PAIR, a novel Progressive prompting Augmented mIning fRamework…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Recommender Systems and Techniques
