This paper studies continual learning (CL) for sentiment classification (SC). In this setting, the CL system learns a sequence of SC tasks incrementally in a neural network, where each task builds a classifier to classify the sentiment of reviews of a particular product category or domain. Two natural questions are: Can the system transfer the knowledge learned in the past from the previous tasks to the new task to help it learn a better model for the new task? And, can old models for previous tasks be improved in the process as well? This paper proposes a novel technique called KAN to achieve these objectives. KAN can markedly improve the SC accuracy of both the new task and the old tasks via forward and backward knowledge transfer. The effectiveness of KAN is demonstrated through extensive experiments.
翻译:在这种背景下,CL系统在一个神经网络中逐步学习一系列SC任务,每个任务都建立一个分类器,对某一产品类别或领域审查的情绪进行分类。有两个自然问题是:系统能否将过去学到的知识从以往的任务转移到新的任务中,以帮助它学习更好的新任务模式?此外,在过程中能否改进以前任务的旧模式?本文件提出一种称为KAN的新技术,以实现这些目标。KAN可以通过前向和后向知识转让,显著提高SC的新任务和旧任务的准确性。KAN的有效性通过广泛的实验得到证明。