AI Linguistics

Guosheng Zhang
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Abstract

This research investigates the development of a linguistics for artificial intelligence (AI) to demystify the ”black box” of AI. At its core, the language of AI is Embedding—a novel high-dimensional, intelligent language. Embedding exhibits dual characteristics: it operates both as a semantic domain and as a mathematical point. This duality enables Embedding to maintain the discrete, symbolic nature of human languages while facilitating continuous operations in high-dimensional spaces, unlocking significant potential for advanced intelligence. A series of specialized experiments were designed to explore Embedding’s intrinsic properties, including its behavior as a semantic cloud in high-dimensional space, its degrees of freedom, and spatial transformations. Key findings include the discovery of substantial redundant dimensions in embeddings, confirmation that embeddings lack critical dimensions, and the measurement of engineering dimensions in natural language. This research also establishes the linguistic foundations and application limits of techniques such as dropout strategies, AI model distillation, and scaling laws among others. Building on these insights, we propose innovative solutions across several fields, including AI architecture design, AI reasoning, domain-based embedding search, and the construction of a multi-intelligence spectrum for embeddings. Ultimately, we introduce a foundational methodology for embedding everything from real-world into the AI world, providing a comprehensive reference framework for the evolution of artificial general intelligence (AGI) and artificial superintelligence (ASI). Additionally, this research explores linguistic approaches to the co-evolution of human intelligence and artificial intelligence.
Linguistics的
本研究探讨了人工智能语言学的发展,以揭开人工智能“黑匣子”的神秘面纱。AI的核心语言是嵌入式——一种新颖的高维智能语言。嵌入表现出双重特征:它既是一个语义域,又是一个数学点。这种对偶性使嵌入能够保持人类语言的离散、符号性质,同时促进在高维空间中的连续操作,释放先进智能的巨大潜力。设计了一系列专门的实验来探索嵌入的内在属性,包括其作为高维空间中的语义云的行为,其自由度和空间转换。主要发现包括在嵌入中发现大量冗余尺寸,确认嵌入缺乏关键尺寸,以及用自然语言测量工程尺寸。本研究还建立了辍学策略、人工智能模型蒸馏、缩放定律等技术的语言基础和应用限制。基于这些见解,我们提出了跨多个领域的创新解决方案,包括人工智能架构设计、人工智能推理、基于域的嵌入搜索以及用于嵌入的多智能频谱的构建。最后,我们介绍了一种将现实世界中的一切嵌入人工智能世界的基本方法,为人工通用智能(AGI)和人工超级智能(ASI)的发展提供了一个全面的参考框架。此外,本研究还探讨了人类智能和人工智能共同进化的语言学方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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