面向情感分类的半无监督终身学习:少人工数据标注,多自学习

Xianbin Hong, Gautam Pal, S. Guan, Prudence W. H. Wong, Dawei Liu, K. Man, Xin Huang
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引用次数: 3

摘要

终身机器学习是一种新的机器学习模式,可以在学习过程中不断积累知识。知识提取和重用能力使终身机器学习能够解决相关问题。传统的方法,如Naïve贝叶斯和一些基于神经网络的方法,只是为了在单个任务上实现最佳性能。与它们不同的是,本文中的终身机器学习侧重于如何在学习过程中积累知识,并将其用于进一步的任务。同时,随着知识的重用,训练对标注数据的需求也显著减少。本文提出终身学习的目标是使用更少的标记数据和计算成本,以达到与监督学习相同甚至更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Unsupervised Lifelong Learning for Sentiment Classification: Less Manual Data Annotation and More Self-Studying
Lifelong machine learning is a novel machine learning paradigm which can continually accumulate knowledge during learning. The knowledge extracting and reusing abilities enable the lifelong machine learning to solve the related problems. The traditional approaches like Naïve Bayes and some neural network based approaches only aim to achieve the best performance upon a single task. Unlike them, the lifelong machine learning in this paper focus on how to accumulate knowledge during learning and leverage them for the further tasks. Meanwhile, the demand for labeled data for training also be significantly decreased with the knowledge reusing. This paper suggests that the aim of the lifelong learning is to use less labeled data and computational cost to achieve the performance as well as or even better than the supervised learning.
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