跨学科语言学中的人工智能

Svetlana Sorokina
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引用次数: 0

摘要

人工智能(AI)正在成为各种科学学科、行业和日常生活中不可或缺的一部分。人工智能研究涵盖了相当多的科学领域,该主题需要一种综合和融合的方法来应对其多方面的挑战。本文对定义和解释人工智能概念的现有方法进行了广泛的调查。研究目标是确定人工智能的不变特征,强调其跨学科性质。文章对推动人工智能进步的主要驱动力、技术和关键研究模型进行了分类。人工智能具有独特的能力,可以利用知识,获得额外的见解,并通过分析人类认知的表达和方法获得类似人类的智力表现。对人类智力活动的模仿和对持续进化和适应性的内在倾向,既开启了新的研究前景,也使对这些过程的理解复杂化。算法、大数据处理和自然语言处理对于推进人工智能学习技术至关重要。对现有语言学研究的综合分析表明,有机会统一该领域内的各种研究方法,重点关注文本数据挖掘、信息检索、知识提取、分类、抽象等关键任务。人工智能的研究使人们有可能了解其在科学、工业和日常生活等各个领域的认知潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Interdisciplinary Linguistics
Artificial intelligence (AI) is becoming an integral part of various scientific disciplines, industries, and everyday life. AI studies cover quite a number of scientific fields, and the topic needs an integrated and convergent approach to address its multifaceted challenges. This paper provides an extensive survey of existing approaches to define and interpret the AI concept. The research objective was to identify the invariant characteristics of AI that underscore its interdisciplinary nature. The article categorizes the primary drivers, technologies, and key research models that fuel the advancement of AI, which possesses a unique capability to leverage knowledge, acquire additional insights, and attain human-like intellectual performance by analyzing expressions and methods of human cognition. The emulation of human intellectual activity and inherent propensity for continual evolution and adaptability both unlock novel research prospects and complicate the understanding of these processes. Algorithms, big data processing, and natural language processing are crucial for advancing the AI learning technologies. A comprehensive analysis of the existing linguistic research revealed an opportunity to unify various research approaches within this realm, focusing on pivotal tasks, e.g., text data mining, information retrieval, knowledge extraction, classification, abstracting, etc. AI studies make it possible to comprehend its cognitive potential applications across diverse domains of science, industry, and daily life.
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