"Although written simply enough to be accessible to undergraduates, accomplished scholars are likely to appreciate it too. Reading it taught me quite a lot about a subject I thought I knew rather well."<br> - Paul Vogt, Illinois State University<br> <br> "This book brings the art and science of buil
Data Management for Social Scientists: From Files to Databases (Methodological Tools in the Social Sciences)
โ Scribed by Nils B. Weidmann
- Publisher
- Cambridge University Press
- Tongue
- English
- Leaves
- 243
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
The 'data revolution' offers many new opportunities for research in the social sciences. Increasingly, social and political interactions can be recorded digitally, leading to vast amounts of new data available for research. This poses new challenges for organizing and processing research data. This comprehensive introduction covers the entire range of data management techniques, from flat files to database management systems. It demonstrates how established techniques and technologies from computer science can be applied in social science projects, drawing on a wide range of different applied examples. This book covers simple tools such as spreadsheets and file-based data storage and processing, as well as more powerful data management software like relational databases. It goes on to address advanced topics such as spatial data, text as data, and network data. This book is one of the first to discuss questions of practical data management specifically for social science projects. This title is also available as Open Access on Cambridge Core.
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