Loading...
Information and Democracy Semantic Landscape
A data map of abstracts from the Observatory on Information and Democracy's first research cycle

Description:

This interactive map represents the landscape of the literature analyzed during the OID's first research cycle. Each point corresponds to the abstract of one of our sources, positioned in a semantic space based on its content's embedding. The color coding highlights clusters of abstracts that discuss overarching macro-topics, further subdivided into specific, detailed sub-topics.

Use:

The map can be used to efficiently explore the 1,664 sources cited in the Observatory's report, offering insights into the thematic distribution of topics across the analyzed literature. Hover over any point to see the title of the paper that deals with that topic and click to open it in a google search. Use the search bar on the top left to look for words in the sources titles, along with the regional filters and the histogram to filter by region and publication date.

Method:

To create the map we embedded the abstracts of our sources using the all-MiniLM-L6-v2 model from SentenceTranformer. We then used umap for dimensionality reduction into a 2D semantic space and employed hdbscan to identify topic clusters. Finally, we conducted content analysis to derive detailed and macro-topic labels. The datamapplot library was then used to create the visualization.

Author: Giovanni Maggi, OID Data Officer

Read more

Point Data: 0%
Label Data: 0%
Meta Data: 0%
Histogram Bin Data: 0%
Histogram Index Data: 0%
Select Region

Global
Global North
Global Majority
Other

Abstracts Maps – Interactive Map

Developed in partnership with CNRS Institute for Complex Systems.

This map represents a statistical summary of the thematic content of the report. The network graph represents relations between the words in the report, placing them closer to each other the more they are related. The bigger the node, the more present the word is, signalling its role in defining what the report or chapter is about. The colors represent words that are closely related to each other and can be interpreted as a topic.

The map was generated by Giovanni Maggi using the GarganText tool – developed by the CNRS Institute of Complex Systems – on the basis of the repot’s text.