Social media platforms such as Twitter, Facebook etc can be utilised as an important source of information during disaster events. This information can be used for disaster response and crisis management if processed accurately and quickly. However, the data present in such situations is ever-changing, and using considerable resources during such a crisis is not feasible. Therefore, we have to develop a low resource and continually learning system that incorporates text classification models which are robust against noisy and unordered data. We utilised Distributed learning which enabled us to learn on resource-constrained devices, then to alleviate catastrophic forgetting in our target neural networks we utilized regularization. We then applied federated averaging for distributed learning and to aggregate the central model for continual learning.
翻译:社交媒体平台,如Twitter、Facebook等,在灾害发生时可以用作重要的信息来源。这些信息如果得到准确和快速处理,可以用于救灾和危机管理。但是,这类情况下的数据是不断变化的,在危机期间使用大量资源是不可行的。因此,我们必须开发一个低资源和持续学习系统,纳入对吵闹和无序数据的强力文字分类模式。我们利用分布式学习,使我们能够学习资源紧缺的装置,然后减轻在目标神经网络中被遗忘的灾难性后果,我们利用了正规化。然后,我们应用了平均联盟式的学习分布式,并汇总了持续学习的中央模式。