| Literature DB >> 26560884 |
Mathias Leidig1, Richard M Teeuw1.
Abstract
Digital information technologies, such as the Internet, mobile phones and social media, provide vast amounts of data for decision-making and resource management. However, access to these technologies, as well as their associated software and training materials, is not evenly distributed: since the 1990s there has been concern about a "Digital Divide" between the data-rich and the data-poor. We present an innovative metric for evaluating international variations in access to digital data: the Data Poverty Index (DPI). The DPI is based on Internet speeds, numbers of computer owners and Internet users, mobile phone ownership and network coverage, as well as provision of higher education. The datasets used to produce the DPI are provided annually for almost all the countries of the world and can be freely downloaded. The index that we present in this 'proof of concept' study is the first to quantify and visualise the problem of global data poverty, using the most recent datasets, for 2013. The effects of severe data poverty, particularly limited access to geoinformatic data, free software and online training materials, are discussed in the context of sustainable development and disaster risk reduction. The DPI highlights countries where support is needed for improving access to the Internet and for the provision of training in geoinfomatics. We conclude that the DPI is of value as a potential metric for monitoring the Sustainable Development Goals of the Sendai Framework for Disaster Risk Reduction.Entities:
Mesh:
Year: 2015 PMID: 26560884 PMCID: PMC4641581 DOI: 10.1371/journal.pone.0142076
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Weblinks for data sources used for the DPI factors.
| Factor | Year of the most recent data used | Data Source |
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| (all data downloaded on 05 September 2014) | ||
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| Upload and Download Speed [kbps to Mbps] | 2013 |
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| Percent of households with a computer | 2013 | From WDI table 5.12: “The Information Society”; original source: ITU. |
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| Mobile Phone Subscriptions: | 2012 and 2013 |
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| Mobile Network Coverage: | From WDI table 5.11:“Power & communications”, original source: ITU. Missing data filled with data of same year, from | |
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| Individuals using the Internet: % of population. | 2013 | From WDI table 5.12: “The Information Society”, original source: ITU. Missing data filled with data of same year, from |
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| Number of universities (2014) | 2012 to 2014 |
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| Population (millions, 2013) |
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| People in tertiary education (2012, 2013) |
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* Since mid-2015 the netindex.com website is no longer accessible; however an alternative source of Internet Speed data is: http://www.ookla.com.
Fig 1Data sets input to calculate the Data Poverty Index.
Statistical assessment of the DPI factors.
| Factor combi-nation | Pearson Coefficient R | Determination Coefficient R2 | t-value | p-value | tcrit for p = 0,05 (one tailed) | t > tcrit | critical value for R (p = 0,05) |
|---|---|---|---|---|---|---|---|
| 1/2 | 0,58 | 0,33 | 8,66 | 3,56E-15 | 1,66 | True | 0,13 |
| 1/3 | 0,60 | 0,36 | 9,16 | 1,83E-16 | 1,66 | Ture | 0,13 |
| 1/4 | 0,31 | 0,10 | 4,03 | 4,39E-05 | 1,66 | True | 0,13 |
| 1/5 | 0,55 | 0,31 | 8,15 | 6,62E-14 | 1,66 | True | 0,13 |
| 2/3 | 0,94 | 0,89 | 34,14 | 6,38E-73 | 1,66 | True | 0,13 |
| 2/4 | 0,52 | 0,27 | 7,40 | 4,40E-12 | 1,66 | True | 0,13 |
| 2/5 | 0,70 | 0,49 | 12,05 | 4,01E-24 | 1,66 | True | 0,13 |
| 3/4 | 0,52 | 0,27 | 7,45 | 3,42E-12 | 1,66 | True | 0,13 |
| 3/5 | 0,70 | 0,49 | 12,06 | 3,79E-24 | 1,66 | True | 0,13 |
| 4/5 | 0,47 | 0,22 | 6,54 | 4,61E-10 | 1,66 | True | 0,13 |
Factor 1: Internet Speed; Factor 2: Internet Users; Factor 3: Hardware; Factor 4: Mobile Devices; Factor 5: Education. Remark: the number of samples (countries with complete datasets) is 152.
Fig 2Map showing global Data Poverty for 2013, by nation states.
The locations of the 50 most populous cities are also shown. The base map (world borders) was obtained from http://diva-gis.org/data.
Example scores of the Data Poverty Index (DPI) and relationships to the World Bank income classification.
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| 1. Iceland | 0.17 | 83. China | 2.05 |
| 2. Norway | 0.36 | 109. Indonesia | 2.75 |
| 3. Finland | 0.39 | 114. Nigeria | 2.88 |
| 4. Estonia | 0.51 | 129. India | 3.16 |
| 5. Denmark | 0.52 | 142. Benin | 3.49 |
| 8. U.S.A | 0.55 | 148. Congo, Dem. | 3.67 |
| 17. United Kingdom | 0.71 | 149. Malawi | 3.72 |
| 21. Germany | 0.76 | 150. Yemen | 3.78 |
| 23. Japan | 0.77 | 151. Myanmar | 3.95 |
| 39. Russia | 1.04 | 152. Burkina Faso | 4.04 |
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| Low-income countries | 4.04–2.62 | ||
| Lower-middle income countries | 3.78–1.41 | ||
| Upper-middle income countries | 3.32–0.97 | ||
| High-income countries | 1.53–0.17 | ||
Scores: < 1.21, high data poverty; 1.21–2.42, above average data poverty; 2.42–3.62, below average data poverty; > 3.62, low data poverty. Remark: Only countries with a complete dataset have been considered.
* China Mainland, excluding Macao and Hong Kong.
Fig 3The Data Poverty Index in relation to World Banks Income classification.
The ends of the whisker are set at 1.5*Interquartile Range (IQR) above the third quartile (Q3) and 1.5*IQR below the first quartile (Q1).
Fig 4Spider plot indicating the average contribution of each factor to the DPI score of the corresponding World Bank income class.
Overview of the average DPI factor scores compared to the World Bank income classification.
| World Bank Income Class | Average Internet-Speed Factor | Average Hard- ware Factor | Average Internet-Users Factor | Average Mobile Devices Factor | Average Edu-cation Factor | Average DPI Factor |
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| 0,96 | 0,79 | 0,77 | 0,99 | 0,60 |
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| 0,78 | 0,41 | 0,42 | 0,95 | 0,41 |
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| 0,72 | 0,22 | 0,26 | 0,89 | 0,28 |
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| 0,67 | 0,05 | 0,09 | 0,70 | 0,09 |
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Comparison of input variables of global indices dealing with global disaster risk.
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| Used Indicators |
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| Values available online; factors un-weighted. | Mobile cellular subscriptions per 100 people; Country population; |
| Telephone quality: % of population covered by mobile cellular network; | |
| Individuals using Internet, % of population; Tertiary Gross enrolment ratio; | |
| % households with a computer; Number of universities in a country; | |
| Internet upload speed (qualifying date: 10.12.2013); | |
| Internet download speed (qualifying date: 10.12.2013). | |
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| Values only available in report; factors weighted. |
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| % households with a computer; Fixed-telephone lines per 100 inhabitants; | |
| Fixed (wired)-broadband Internet subscriptions per 100 inhabitants; | |
| Secondary gross enrolment ratio; Tertiary gross enrolment ratio; | |
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| Values not available; factor weighting not stated. | % of population with access to improved sanitation facilities. |
| Immunization rate for measles; | |
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| Values available in report and online; factors weighted by expert knowledge. | Total population of country; Number of physicians per 10,000 people; |
| Share of the population without access to improved sanitation; | |
| Share of the population without access to an improved water source; | |
| Number of hospital beds per 10,000 people; Adult literacy rate; | |
| Gross domestic product per capita (purchasing power parity); | |
| Public health expenditure; Private health expenditure; Gini index; | |
| Dependency ratio (share of under 15- and over 65-year-olds in relation to the working population); Combined gross school enrolment; | |
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Legend for the Used Indicators column: Data sets freely available, apart from Italics:
*1 dataset freely available but patchy and inconsistent coverage of countries;
*2: data not up-to-date, last updated in 2007 or 2008;
*3: data is not up-to-date, last updated in 2010.
Bold: data not freely available.