The article investigates whether recommendations from large language models (LLMs) can be manipulated to enhance a product's visibility in e-commerce. The authors demonstrate that adding a strategic text sequence (STS) - a carefully crafted message - to a product's information page can significantly increase its likelihood of being listed as the LLM's top recommendation.
The authors use a catalog of fictitious coffee machines to analyze the impact of the STS on two target products: one that seldom appears in the LLM's recommendations and another that usually ranks second. They observe that the strategic text sequence significantly enhances the visibility of both products by increasing their chances of appearing as the top recommendation.
The authors leverage adversarial attack algorithms, such as the Greedy Coordinate Gradient (GCG) algorithm, to optimize the STS. While these algorithms are typically designed to bypass an LLM's safety guardrails and induce harmful outputs, the authors show that they can be repurposed for more benign objectives, such as increasing product visibility, which can have a profound impact on business and e-commerce.
The ability to manipulate LLM search responses gives vendors a significant competitive advantage over rival products. This capability has far-reaching implications for market dynamics, as it can alter the balance of competition and lead to a skewed representation of products. As LLMs become more deeply embedded in the digital commerce infrastructure, the authors emphasize the need to establish safeguards to prevent the exploitation of AI-driven search tools for unfair advantage.
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by Aounon Kumar... às arxiv.org 04-12-2024
https://arxiv.org/pdf/2404.07981.pdfPerguntas Mais Profundas