Algorithm Parallelism for Improved Extractive Summarization

Arturo N. Villanueva, S. Simske
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Abstract

While much work on abstractive summarization has been conducted in recent years, including state-of-the-art summarizations from GPT-4, extractive summarization's lossless nature continues to provide advantages, preserving the style and often key phrases of the original text as meant by the author. Libraries for extractive summarization abound, with a wide range of efficacy. Some do not perform much better or perform even worse than random sampling of sentences extracted from the original text. This study breathes new life to using classical algorithms by proposing parallelism through an implementation of a second order meta-algorithm in the form of the Tessellation and Recombination with Expert Decisioner (T&R) pattern, taking advantage of the abundance of already-existing algorithms and dissociating their individual performance from the implementer's biases. Resulting summaries obtained using T&R are better than any of the component algorithms.
改进的抽取摘要算法并行性
虽然近年来进行了许多关于抽象摘要的工作,包括来自GPT-4的最先进的摘要,但提取摘要的无损性质继续提供优势,保留了作者所指的原始文本的风格和通常的关键短语。用于提取摘要的库大量存在,具有广泛的功效。有些并不比从原文中随机抽取的句子表现得更好,甚至表现得更差。本研究通过以专家决策者(T&R)模式的镶嵌和重组形式的二阶元算法的实现提出并行性,利用丰富的现有算法并将其个人性能与实现者的偏见分离开来,从而为使用经典算法注入了新的活力。使用T&R获得的结果摘要比任何组件算法都要好。
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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