Trading Devil Final: Backdoor attack via Stock market and Bayesian Optimization

Orson Mengara
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Abstract

Since the advent of generative artificial intelligence, every company and researcher has been rushing to develop their own generative models, whether commercial or not. Given the large number of users of these powerful new tools, there is currently no intrinsically verifiable way to explain from the ground up what happens when LLMs (large language models) learn. For example, those based on automatic speech recognition systems, which have to rely on huge and astronomical amounts of data collected from all over the web to produce fast and efficient results, In this article, we develop a backdoor attack called MarketBackFinal 2.0, based on acoustic data poisoning, MarketBackFinal 2.0 is mainly based on modern stock market models. In order to show the possible vulnerabilities of speech-based transformers that may rely on LLMs.
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交易魔鬼决赛:通过股市和贝叶斯优化进行后门攻击
自从生成式人工智能问世以来,每家公司和研究人员都急于开发自己的生成式模型,无论是否具有商业价值。鉴于这些功能强大的新工具有大量用户,目前还没有内在可验证的方法来从根本上解释 LLM(大型语言模型)学习时会发生什么。例如,那些基于自动语音识别的系统,它们必须依赖从网络上收集的大量数据才能快速高效地生成结果,而在本文中,我们开发了一种名为 MarketBackFinal 2.0 的基于声学数据中毒的后门攻击,MarketBackFinal 2.0 主要基于现代股票市场模型。为了展示基于语音的转换器可能存在的漏洞,这些转换器可能依赖于 LLMs。
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