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Who has what? Assessing who has access to what devices in the education response to the COVID-19 pandemic

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As with education in general, our ability to respond to COVID-19  in education depends significantly on access to resources by students and teachers. Even in this moment of crisis, governments should inform their decisions regarding education and educational resources on the available data whenever possible. However, we realise that accessing relevant data is not necessarily straightforward and this should not block other elements of system response-recovery-reform. 

Crucial data relating to education include:

Radar charts on technologies

To help determine the appropriate technology-supported education response, we have devised a radar chart (see Figure 1) which allows policymakers to measure access to five technologies (radio, TV, non-smartphone, smartphone, laptop). The diagram shows additional affordance alongside non-smart phones (SMS, interactive voice), laptops (unmetered internet) and smartphones (mobile internet). 

Figure 1: Radar chart on technologies

To use this chart, policymakers should estimate the percentage of households in their nation that have access to a device (e.g., radio or a non-smartphone). Bear in mind that this figure will not represent the number of children that may have access to such a device. While a household may have one TV, for example, TV time may be shared between more than one child.

Technologies in high- vs low-income countries

Using the above methodology, Figure 2 compares the values for a high-income country (blue)with the values for a low-income country (orange). 

Figure 2: Radar chart on technologies: high- vs. low-income countries 

In a high-income country, we expect:

In low-income countries, we expect:

In addition to gathering data on the population’s existing technology, we may ask whether distributing additional technology is feasible. The small red arrows in Figure 2 indicate possible shifts to account for purchasing power in low-income countries. While some improvements (radio, TV, non-smartphones) may be possible, mass acquisition of smartphones or even laptops would appear very unlikely. Earlier work with student teachers in Ghana shows that some students would acquire smartphones if there was a use for them. However, student teachers did not acquire smartphones as they were not used or required in college (in 2015/16). Nevertheless, this does not mean that a smartphone is within each teacher’s economic means. The most likely extension is wider use of existing technologies. In low-income settings, for instance, more students may try to acquire a radio or a non-smart phone while very few people will be able to afford a laptop.

It is unlikely that low- and middle-income countries will be able to supply additional smartphones/laptops and connectivity at short notice to the low-income populations. Non-smartphones and TVs may be available within communities and may be acquired by some. For the lowest-income populations, we propose investigating the distribution of radios and MP3 players. Both radios and MP3 players are available at low-cost (few USD; somewhat lower than even the cheapest non-smartphones). It may be possible to use existing models and, in a second wave, make improvements on those regarding robustness and power supply. For example, wind-up radios have been used in remote locations and some manufacturers have produced wind-up MP3 players as well.

Developing an equitable response

In Figure 3, we consider different populations together in one nation. This radar chart illustrates the mix of technologies used in a specific country. The percentage shown illustrates which percentage of the population has access to a specific technology.

Figure 3: Radar chart on technologies: a layering of populations within one country

Let’s review what we’ve got so far. We assessed the average affordances of different nations by income (Figure 2). We then overlaid the average technology affordances of different populations (Figure 3). We now look at the distribution of different populations within one country. Figure 4 shows the distribution of populations within three types of countries (high-income, middle-income, low-income) regarding their access to technologies. 

Figure 4: Distribution of populations within high-, middle-, and low-income countries

We note that these are idealised scenarios that do not relate to the Human Development Index. They illustrate — in a schematic way — that different populations co-exist. In a high-income country, there is a very small low-income population. In a middle-income country, the majority of the population will be middle-income although there may well be a low-income population of appreciable size. In a low-income country, the majority of the population will be a low-income population. However, there will be some middle-income citizens (e.g., teachers and other professionals) and some high-income citizens. Importantly, the diagram indicates that a response based on smartphones/internet in a low-income country will only reach a small proportion of the population.

In summary, this post has highlighted the need to take full stock of the population’s access to different technologies. A thorough review of technologies used within a country (and which groups use that technology) is necessary to inform which education responses best suit the country. Based on our analyses, we make two main points: 

  1. Responses based on smartphones or the use of the internet will only help a small portion of the population of low-income countries. 
  2. Efforts should be focused on using existing technologies that users are familiar with. 

While the immediate response to the pandemic is critical, it should not come at the expense of attempting to mitigate medium- and long-term implications of the crisis. Mass purchasing of new devices should be done with extreme caution as it may deplete resources that are more urgently needed elsewhere or when schools reopen.

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