Tangles: A Structural Approach to Artificial Intelligence in the Empirical Sciences
Diestel, Reinhard
相關主題
商品描述
Tangles offer a precise way to identify structure in imprecise data. By grouping qualities that often occur together, they not only reveal clusters of things but also types of their qualities: types of political views, of texts, of health conditions, or of proteins. Tangles offer a new, structural, approach to artificial intelligence that can help us understand, classify, and predict complex phenomena. This has become possible by the recent axiomatization of the mathematical theory of tangles, which has made it applicable far beyond its origin in graph theory: from clustering in data science and machine learning to predicting customer behaviour in economics; from DNA sequencing and drug development to text and image analysis. Such applications are explored here for the first time. Assuming only basic undergraduate mathematics, the theory of tangles and its potential implications are made accessible to scientists, computer scientists, and social scientists.
商品描述(中文翻譯)
糾結(Tangles)提供了一種在不確定數據中識別結構的精確方法。通過將經常一起出現的特性分組,它們不僅揭示了事物的聚集,還揭示了它們特性的類型:政治觀點的類型、文本的類型、健康狀況的類型或蛋白質的類型。糾結提供了一種新的結構化的人工智能方法,可以幫助我們理解、分類和預測複雜現象。這是由於最近對糾結數學理論的公理化,使其適用於遠超過圖論起源的領域:從數據科學和機器學習中的聚類,到經濟學中的客戶行為預測;從DNA序列和藥物開發到文本和圖像分析。這些應用在這裡首次被探索。只需基礎的大學數學知識,糾結理論及其潛在影響將對科學家、計算機科學家和社會科學家提供易於理解的資訊。