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Main Authors: Liu, Zhaoyang, Du, Xiaocong, Zhou, Yixi, Shi, Ye, Zhang, Haipeng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.04503
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author Liu, Zhaoyang
Du, Xiaocong
Zhou, Yixi
Shi, Ye
Zhang, Haipeng
author_facet Liu, Zhaoyang
Du, Xiaocong
Zhou, Yixi
Shi, Ye
Zhang, Haipeng
contents Life trajectories of notable people convey essential messages for human dynamics research. These trajectories consist of (\textit{person, time, location, activity type}) tuples recording when and where a person was born, went to school, started a job, or fought in a war. However, current studies only cover limited activity types such as births and deaths, lacking large-scale fine-grained trajectories. Using a tool that extracts (\textit{person, time, location}) triples from Wikipedia, we formulate the problem of classifying these triples into 24 carefully-defined types using textual context as complementary information. The challenge is that triple entities are often scattered in noisy contexts. We use syntactic graphs to bring triple entities and relevant information closer, fusing them with text embeddings to classify life trajectory activities. Since Wikipedia text quality varies, we use LLMs to refine the text for more standardized syntactic graphs. Our framework achieves 84.5\% accuracy, surpassing baselines. We construct the largest fine-grained life trajectory dataset with 3.8 million labeled activities for 589,193 individuals spanning 3 centuries. In the end, we showcase how these trajectories can support grand narratives of human dynamics across time and space. Code/data are publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2602_04503
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Fine-grained Classification of A Million Life Trajectories from Wikipedia
Liu, Zhaoyang
Du, Xiaocong
Zhou, Yixi
Shi, Ye
Zhang, Haipeng
Computers and Society
Life trajectories of notable people convey essential messages for human dynamics research. These trajectories consist of (\textit{person, time, location, activity type}) tuples recording when and where a person was born, went to school, started a job, or fought in a war. However, current studies only cover limited activity types such as births and deaths, lacking large-scale fine-grained trajectories. Using a tool that extracts (\textit{person, time, location}) triples from Wikipedia, we formulate the problem of classifying these triples into 24 carefully-defined types using textual context as complementary information. The challenge is that triple entities are often scattered in noisy contexts. We use syntactic graphs to bring triple entities and relevant information closer, fusing them with text embeddings to classify life trajectory activities. Since Wikipedia text quality varies, we use LLMs to refine the text for more standardized syntactic graphs. Our framework achieves 84.5\% accuracy, surpassing baselines. We construct the largest fine-grained life trajectory dataset with 3.8 million labeled activities for 589,193 individuals spanning 3 centuries. In the end, we showcase how these trajectories can support grand narratives of human dynamics across time and space. Code/data are publicly available.
title Fine-grained Classification of A Million Life Trajectories from Wikipedia
topic Computers and Society
url https://arxiv.org/abs/2602.04503