论文标题
基于社会学习的网络分类器
Network Classifiers Based on Social Learning
论文作者
论文摘要
这项工作提出了一种将独立训练的分类器结合到空间和时间上的新方法。空间上的组合意味着空间分布的分类器的输出是聚合的。随着时间的推移,组合意味着分类器在测试过程中响应流数据,即使在此阶段,分类器也会继续提高其性能。通过这样做,建议的架构能够通过未标记的数据随着时间的推移提高预测性能。受社会学习算法的启发,需要对观察分布进行事先了解,我们提出了一个社交机器学习(SML)范式,该范式能够利用学习阶段中生成的不完美模型。我们表明,这种策略的可能性很高,并且对训练良好的分类器产生了强大的结构。提供了带有前馈神经网络集合的模拟,以说明理论结果。
This work proposes a new way of combining independently trained classifiers over space and time. Combination over space means that the outputs of spatially distributed classifiers are aggregated. Combination over time means that the classifiers respond to streaming data during testing and continue to improve their performance even during this phase. By doing so, the proposed architecture is able to improve prediction performance over time with unlabeled data. Inspired by social learning algorithms, which require prior knowledge of the observations distribution, we propose a Social Machine Learning (SML) paradigm that is able to exploit the imperfect models generated during the learning phase. We show that this strategy results in consistent learning with high probability, and it yields a robust structure against poorly trained classifiers. Simulations with an ensemble of feedforward neural networks are provided to illustrate the theoretical results.