High-Value Patents Recognition with Random Forest and Enhanced Fire Hawk Optimization Algorithm.

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Xiaona Yao, Huijia Li, Sili Wang
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引用次数: 0

Abstract

High-value patents are a key indicator of new product development, the emergence of innovative technology, and a source of innovation incentives. Multiple studies have shown that patent value exhibits a significantly skewed distribution, with only about 10% of patents having high value. Identifying high-value patents from a large volume of patent data in advance has become a crucial problem that needs to be addressed urgently. However, current machine learning methods often rely on manual hyperparameter tuning, which is time-consuming and prone to suboptimal results. Existing optimization algorithms also suffer from slow convergence and local optima issues, limiting their effectiveness on complex patent datasets. In this paper, machine learning and intelligent optimization algorithms are combined to process and analyze the patent data. The Fire Hawk Optimization Algorithm (FHO) is a novel intelligence algorithm suggested in recent years, inspired by the process in nature where Fire Hawks capture prey by setting fires. This paper firstly proposes the Enhanced Fire Hawk Optimizer (EFHO), which combines four strategies, namely adaptive tent chaotic mapping, hunting prey, adding the inertial weight, and enhanced flee strategy to address the weakness of FHO development. Benchmark tests demonstrate EFHO's superior convergence speed, accuracy, and robustness across standard optimization benchmarks. As a representative real-world application, EFHO is employed to optimize Random Forest hyperparameters for high-value patent recognition. While other intelligent optimizers could be applied, EFHO effectively overcomes common issues like slow convergence and local optima trapping. Compared to other classification methods, the EFHO-optimized Random Forest achieves superior accuracy and classification stability. This study fills a research gap in effective hyperparameter tuning for patent recognition and demonstrates EFHO's practical value on real-world patent datasets.

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基于随机森林和增强火鹰优化算法的高价值专利识别。
高价值专利是新产品开发、创新技术出现的关键指标,也是创新激励的来源。多项研究表明,专利价值呈现明显的倾斜分布,只有约10%的专利具有高价值。从海量的专利数据中提前识别出高价值的专利,已经成为一个迫切需要解决的关键问题。然而,目前的机器学习方法通常依赖于手动超参数调优,这很耗时,而且容易产生次优结果。现有的优化算法还存在收敛缓慢和局部最优的问题,限制了它们在复杂专利数据集上的有效性。本文将机器学习和智能优化算法相结合,对专利数据进行处理和分析。火鹰优化算法(FHO)是近年来提出的一种新型智能算法,其灵感来自于自然界中火鹰通过点火捕获猎物的过程。本文首先提出了增强型火鹰优化器(EFHO),该优化器结合了自适应混沌映射、猎捕猎物、增加惯性权重和增强逃离策略四种策略来解决FHO发展的弱点。基准测试表明,EFHO在标准优化基准测试中具有卓越的收敛速度、准确性和鲁棒性。作为具有代表性的现实应用,利用EFHO优化随机森林超参数,实现高价值专利识别。虽然可以应用其他智能优化器,但EFHO有效地克服了收敛缓慢和局部最优捕获等常见问题。与其他分类方法相比,efho优化后的随机森林具有更好的准确率和分类稳定性。该研究填补了专利识别中有效超参数调优的研究空白,并证明了EFHO在实际专利数据集上的实用价值。
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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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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