From Talk to Action with Accountability: Monitoring the Public
Discussion of Policy Makers with Deep Neural Networks and Topic Modelling
- URL: http://arxiv.org/abs/2010.08346v3
- Date: Fri, 9 Jul 2021 16:12:22 GMT
- Title: From Talk to Action with Accountability: Monitoring the Public
Discussion of Policy Makers with Deep Neural Networks and Topic Modelling
- Authors: Vili H\"at\"onen and Fiona Melzer
- Abstract summary: We propose a multi-source topic aggregation system (MuSTAS)
MuSTAS processes policy makers speech and rhetoric from several publicly available sources into an easily digestible topic summary.
This topic digest will serve the general public and civil society in assessing where, how, and when politicians talk about climate and climate policies.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Decades of research on climate have provided a consensus that human activity
has changed the climate and we are currently heading into a climate crisis.
While public discussion and research efforts on climate change mitigation have
increased, potential solutions need to not only be discussed but also
effectively deployed. For preventing mismanagement and holding policy makers
accountable, transparency and degree of information about government processes
have been shown to be crucial. However, currently the quantity of information
about climate change discussions and the range of sources make it increasingly
difficult for the public and civil society to maintain an overview to hold
politicians accountable.
In response, we propose a multi-source topic aggregation system (MuSTAS)
which processes policy makers speech and rhetoric from several publicly
available sources into an easily digestible topic summary. MuSTAS uses novel
multi-source hybrid latent Dirichlet allocation to model topics from a variety
of documents. This topic digest will serve the general public and civil society
in assessing where, how, and when politicians talk about climate and climate
policies, enabling them to hold politicians accountable for their actions to
mitigate climate change and lack thereof.
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