Data is Everywhere

Everything we do online or out in the world is collected as data and stored. This data is tracked and analyzed and used to inform predictions about the future. Data about our spending habits informs companies about strategies for Internet advertising. Data about our values and interests informs online dating websites. And data about our beliefs informs political predictions.

Photo of several lines of computer codeStudent data is no different. Educational institutions and organizations can collect data about students including anything from where students are originally from to how much assistance they need in their classes. This data, in turn, can be used to make predictions about student outcomes and hopefully then used to have a positive impact on students’ success.

However, there are dark sides to the prevalence of data. While issues in algorithmic bias have made headlines recently in industries such as criminal justice and healthcare, these same issues can exist anywhere that data is analyzed and utilized by machines, including in higher education. Problems arise both from the way that algorithms themselves are written (and who is writing them), and from biased data being used to make future predictions, which happens as a result of human bias that already exists in our society and creates feedback loops.

The Problem of the Biased Algorithm

For many generations in the United States, the most successful and powerful people in society were white men. Other members of society were not permitted many of the rights that would allow them to flourish – the right to citizenship, the right to vote, the right to an education, and more. Although rights in the United States have changed significantly since its early days, it would be an exaggeration to say that all issues have been resolved. Racism, sexism, transphobia, and other varieties of xenophobia are alive in America today, especially when considering issues such as wealth disparities, housing access, unequal criminal sentencing, stereotyping and prejudice, and much more. And those human biases present themselves in the data that we are creating today.

The tricky thing about algorithms and about technology more generally is that the tech itself cannot evaluate the decisions that it is suggesting or understand if a piece of the puzzle is missing. Past data may be suggestive of certain trends, but if we don’t look at the events that led to those trends then we have an incomplete picture.

Two white men sitting in an office and writing code at computers.One of the best and most amusing examples to help understand algorithmic bias is to look at the neural network experiments being done by Janelle Shane, which she chronicles on her blog AI Weirdness. In her experiments, she feeds public data into a neural network to create something new. For example, she has collected names of real Pokémon characters to train a neural network to create new characters, collected names of cats to come up with new cat names, and, most amusingly, collected real, preexisting recipes to create new recipes.

In the latter experiment, the neural network has created recipes that call for bizarre ingredients including mashed potato fillets and artichoke gelatin dogs, to make up equally strange dish names including things like Completely Meat Chocolate Pie and Strawberry-Onions Marshmallow Cracker Pie Filling. Something immediately apparent about all these neural network-created food items, aside from how strange and gross they sound, is that they are all based primarily on Western cuisine. In its own way, the data that was put in was biased in favor of Western food, so the results that come out are also biased in favor of the same. A collection of data can reflect a human bias, but algorithms do not have a mind of their own to correct the error.

Biased Algorithms in Higher Education

Algorithms are increasingly being used in higher education to help with things such as admissions and retention, adaptive learning, student support in the form of  things like financial aid and early warning systems, and more. However, without careful development of said algorithms, we will see bias negatively impacting our students, especially many of whom need the most assistance and opportunity to succeed.

Considering students only as numbers and data can have devastating effects. To look at students merely as these data points fails to see the societal barriers that they may be up against – as individuals or as members of a specific socioeconomic group.

Aside from failing to help certain students, schools may also be giving additional privilege to students who already have it when they use algorithms. If a school already has a historical bias towards having students from one background more than another, it is likely that the trend will be perpetuated with the addition of the algorithm. If fed biased data, algorithms will compute results that match the data and thus are also biased.

A collage of images of 45 students facing the camera. The majority of the students are white, with minimal diversity.
Schools that already have a disproportionate majority of white students risk creating a feedback loop that reinforces the acceptance of more white students in the future

 Privacy Problems

The issue of biased algorithms leads to another problem as well: the issue of students having ownership and privacy of their own data. Often in conversations about privacy and data security, some version of this popular argument will come up: “I don’t have anything to hide, so it doesn’t matter to me who can see my data.” However, without the knowledge of how algorithms are designed or how the data that informs them is collected, it is more difficult to say with certainty that it doesn’t matter who can see (and use) the data.

The Solution

Unfortunately, there are no easy answers to these issues. However, here are some ideas of where we can start to ensure the development of unbiased algorithms:

  1. Institutional and organizational staff who are responsible for algorithm development should be prepared to conduct tests and analysis to ensure that none of their algorithms are biased. As with any human-based system, we must be diligent and introspective about the effects of our decisions – whether they are made by human teams or by a machine that has had data fed into it.
  2. Whatever algorithms are put in place, and aside from the move to create more evaluation of those algorithms, people should always remain present. While algorithms may be able to help humans do their jobs better, it should never replace humans. There is nothing that exists that can replace thoughtful evaluation done by live humans, and we shouldn’t try to find something that can.
  3. Teams of developers should be diverse. A diverse team of developers can help identify the ways that different algorithms could harm different people or groups of people. This is similar to how it is recommended that accessibility departments contain people with disabilities – there should be real people representing diversity so that they can design algorithms fairly, and not have someone designing algorithms on someone else’s behalf.
  4. Lastly, everyone should be involved with the continued fight to create greater equity at institutions, even outside of technology departments. Data is improving as our society works toward more inclusive and equitable environments. In the meantime, we need to work to create better equity both on and offline.
coding-meeting2
By having more diversity on teams of developers, schools can avoid some of the biases that sometimes result from using homogeneous teams.

What Is Your Experience?

Do you have experience working with algorithms and machine learning that you would like to share with us? We want to know!  Tell us your stories of how algorithms are implemented at your school and what people working with them do to make sure they are not biased. We hope to publish additional blogs about specific experiences.

Rosa

Rosa headshot
Rosa Calabrese
Manager, Digital Design
WCET – WICHE Cooperative for Educational Technologies
rcalabrese@wiche.edu

Code Photo by Markus Spiske on Unsplash

Coders Photo by Tim van der Kuip on Unsplash

Meeting Photo by Christina @ wocintechchat.com on Unsplash


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