Affiliation:
1. Beijing Institute of Technology
2. Beijing Aerospace Automatic Control Institute
Abstract
Abstract
In recent years, the exploration of knowledge in large-scale human mobility has gained significant attention. In order to achieve a semantic understanding of human behavior and uncover patterns in large-scale human mobility, Named Entity Recognition (NER) is a crucial technology. The rapid advancements in IoT and CPS technologies have led to the collection of massive human mobility data from various sources. Therefore, there’s a need of Cross-domain NER which can transfer entity information from the source domain to automatically identify and classify entities in different target domain texts. In the situation of data-poor, how could we transfer human mobility knowledge over time and space is particularly significant, therefore this paper proposes an Adaptive TextSequence Enhancement Module (at-SAM) to help the model enhance the association between entities in sentences in data-poor target domains. This paper also proposes a Predicted Label-Guided Dual Sequence Aware Information Module (Dual-SAM) to improve the transferability of label information. Experiments were conducted in domains that contain hidden knowledge about human mobility,the results show that this method can transfer task knowledge between multiple different domains in data-poor scenarios and achieve the best performance to date.
Publisher
Research Square Platform LLC