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Lexical Landscapes as large in silico data for examining advanced properties of fitness landscapes

机译:Lexical Landscapes作为大型计算机数据,用于检查健身景观的高级属性

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摘要

In silico approaches have served a central role in the development of evolutionary theory for generations. This especially applies to the concept of the fitness landscape, one of the most important abstractions in evolutionary genetics, and one which has benefited from the presence of large empirical data sets only in the last decade or so. In this study, we propose a method that allows us to generate enormous data sets that walk the line between in silico and empirical: word usage frequencies as catalogued by the Google ngram corpora. These data can be codified or analogized in terms of a multidimensional empirical fitness landscape towards the examination of advanced concepts—adaptive landscape by environment interactions, clonal competition, higher-order epistasis and countless others. We argue that the greater Lexical Landscapes approach can serve as a platform that offers an astronomical number of fitness landscapes for exploration (at least) or theoretical formalism (potentially) in evolutionary biology.
机译:计算机方法已经发展了几代人的进化理论。这尤其适用于适应性景观的概念,它是进化遗传学中最重要的抽象之一,并且仅在最近十年左右的时间里才从大量经验数据集中受益。在这项研究中,我们提出了一种方法,该方法使我们能够生成巨大的数据集,从而在计算机模拟和经验:Google ngram语料库分类的词使用频率之间划分界限。这些数据可以通过多维经验适应度图进行整理或模拟,以检验高级概念—通过环境相互作用,克隆竞争,高阶上位性和其他无数种方式而获得的适应性图景。我们认为,更大的词法景观方法可以作为一个平台,为进化生物学中的探索(至少)或理论形式主义(可能)提供天文数字的适合景观。

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