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Extracting and reusing blocks of knowledge in learning classifier systems for text classification: a lifelong machine learning approach

机译:在学习分类系统中提取和重用知识块进行文本分类:终身机器学习方法

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摘要

Human beings follow a continuous learning paradigm, i.e., they learn to solve smaller and relatively easy problems, retain the learnt knowledge and apply that knowledge to learn and solve more complex and large-scale problems of the domain. Currently, most machine learning and evolutionary computing systems lack this ability to reuse the previous learnt knowledge. This paper presents a lifelong machine learning model for text classification that extracts the useful knowledge from simple problems of a domain and reuses the learnt knowledge to learn complex problems of the domain. The proposed approach adopts a rule-based learning classifier system, and a rich encoding scheme is used to extract and reuse building units of knowledge. The experimental results show that the continuous learning approach outperformed the baseline classifier system.
机译:人类遵循连续的学习范式,即,他们学会解决较小和相对容易的问题,保留学到的知识并应用该知识来学习和解决域名的更复杂和大规模问题。 目前,大多数机器学习和进化计算系统缺乏这种重用前面学识的知识的能力。 本文提出了一个终身机器学习模型,用于文本分类,从域的简单问题中提取有用的知识,并重用所学习的知识来学习域的复杂问题。 所提出的方法采用基于规则的学习分类器系统,并且富编码方案用于提取和重用建筑物的知识单元。 实验结果表明,连续学习方法优于基线分类器系统。

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