Big Data for Social Sciences: Measuring patterns of human behavior through large-scale mobile phone data
P\r{a}l Sunds{\o}y

TL;DR
This dissertation demonstrates how large-scale anonymized mobile phone data can be used to predict socio-economic indicators, understand human behavior during crises, and improve marketing strategies through social network analysis.
Contribution
It introduces novel methods for leveraging big mobile data for social good and marketing, including prediction algorithms and social network mapping at unprecedented scales.
Findings
Mobile data can predict income, illiteracy, and poverty.
Analysis of crises reveals patterns of human movement and information spread.
Social network analysis enhances marketing adoption rates by 13 times.
Abstract
Through seven publications this dissertation shows how anonymized mobile phone data can contribute to the social good and provide insights into human behaviour on a large scale. The size of the datasets analysed ranges from 500 million to 300 billion phone records, covering millions of people. The key contributions are two-fold: 1. Big Data for Social Good: Through prediction algorithms the results show how mobile phone data can be useful to predict important socio-economic indicators, such as income, illiteracy and poverty in developing countries. Such knowledge can be used to identify where vulnerable groups in society are, reduce economic shocks and is a critical component for monitoring poverty rates over time. Further, the dissertation demonstrates how mobile phone data can be used to better understand human behaviour during large shocks in society, exemplified by an analysis of…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Complex Network Analysis Techniques · Opinion Dynamics and Social Influence
