How News Evolves? Modeling News Text and Coverage using Graphs and
Hawkes Process
- URL: http://arxiv.org/abs/2112.03008v1
- Date: Thu, 18 Nov 2021 10:36:40 GMT
- Title: How News Evolves? Modeling News Text and Coverage using Graphs and
Hawkes Process
- Authors: Honggen Zhang and June Zhang
- Abstract summary: We present a method of converting news text collected over time to a sequence of directed multi-graphs, which represent semantic triples.
We model the dynamics of specific topological changes from these graphs using discrete-time Hawkes processes.
With our real-world data, we show that analyzing the structures of the graphs and the discrete-time Hawkes process model can yield insights on how the news events were covered and how to predict how it may be covered in the future.
- Score: 3.655021726150368
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Monitoring news content automatically is an important problem. The news
content, unlike traditional text, has a temporal component. However, few works
have explored the combination of natural language processing and dynamic system
models. One reason is that it is challenging to mathematically model the
nuances of natural language. In this paper, we discuss how we built a novel
dataset of news articles collected over time. Then, we present a method of
converting news text collected over time to a sequence of directed
multi-graphs, which represent semantic triples (Subject ! Predicate ! Object).
We model the dynamics of specific topological changes from these graphs using
discrete-time Hawkes processes. With our real-world data, we show that
analyzing the structures of the graphs and the discrete-time Hawkes process
model can yield insights on how the news events were covered and how to predict
how it may be covered in the future.
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