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Rethinking engineering education: Why focusing on learning preferences matters for diversity

Rethinking engineering education: Why focusing on learning preferences matters for diversity

  • Engineering programs have struggled to boost diversity, with underrepresented groups making up only a small percentage of STEM degree recipients and workers.
  • The traditional approach to teaching engineering courses, focusing on individual learning styles, has been shown to be ineffective in promoting diversity and inclusivity.
  • A more effective approach is to focus on “learning preferences,” which are broader and more flexible than traditional learning styles, allowing for multiple ways of engaging with content.
  • Curriculum design should reflect the voices of all stakeholders, including students, to create a truly democratic education system that prioritizes diverse learning perspectives.
  • Technologies such as adaptive learning applications can be used to understand and cater to individual learning preferences, creating a more inclusive and responsive learning environment for underrepresented groups in STEM fields.

Retention and recruitment efforts designed to boost diversity in engineering programs often fall short of their goals. gorodenkoff/Getty Images

For decades, colleges, government agencies and foundations have experimented with recruitment and retention efforts designed to increase diversity in engineering programs.

However, the efforts have not significantly boosted the number of women, students of color, individuals with disabilities and other underrepresented groups studying and earning degrees in STEM and engineering fields.

Latino, Black, Native American and Alaska Native students are underrepresented among science and engineering degree recipients at the bachelor’s degree level and above. The groups are also underrepresented among STEM workers with at least a bachelor’s degree.

Women are also underrepresented in the STEM workforce and among degree recipients in engineering and computer and information sciences.

I study equity and social justice in STEM learning. In my recent study, I found that more students from diverse backgrounds could excel in engineering programs if course content were tailored to a wider variety of learning preferences.

Why it matters

A female student with glasses looks at an engineering model.

Focusing on learning preferences could boost diversity in engineering courses and careers.
Morsa Images/Getty Images

During my time as a program officer at the National Science Foundation, an independent federal agency that supports science and engineering, I reviewed plenty of research focused on broadening participation and diversifying student enrollment in STEM fields.

Progress can stall on efforts to boost diversity because college instructors do not consider the synergistic relationship between the content and the learner.

Teachers are the mediators, and it is students’ experiences with the curriculum that matter.

It was long a common belief that students have different learning styles. These included kinesthetic, learning through hands-on experiences and physical activity; auditory, learning by listening to information; and visual, learning by seeing information.

More recent research does not support the idea that teaching students according to their learning style leads to improved learning.

That’s why I prefer the term “learning preferences” rather than learning styles. We all have preferences – whether for ice cream flavors, home decor or how we receive information, including how we learn.

Learning preferences are broader and more flexible, allowing multiple ways of engaging with content.

For example, let’s say a teacher always presented equations in a classroom and the student just could not get it. However, it was the only way the information was presented. To the individual learner, they have failed. Some people would say, “These kids can’t learn,” and subsequently counsel the student out of the class.

Then, years are spent repeating the same cycle.

Three college students sit at a desk using a laptop for a project.

Students should have opportunities to connect with engineering content in multiple ways.
10’000 hours/Getty Images

However, educators can broaden their viewpoints if they look at the students as customers. If a customer is shopping for a shirt, they look for one that catches their eye. Ultimately, they find one they like.

Instructors need to take the same approach when trying to help students understand what is happening in class. For instance, if I have trouble with equations, I should be provided with options to engage with the lesson in ways that align with my learning preferences.

What’s next?

Learning styles have been heavily researched. However, content preferences have not been well explored.

In a truly democratic education system, curriculum design should reflect the voices of all stakeholders and not just those in positions of power, namely instructors.

Using data mining and artificial intelligence, educators have a variety of options for creating content for the various preferences a learner may want or need. For example, if a student prefers other representational content, such as word problems, graphics or simulations, AI can create diverse representations so that the learner is exposed to a variety of representations.

I argue that future studies need to consider the use of technologies such as adaptive learning applications to understand students’ learning preferences.

Prioritizing diverse learning perspectives in STEM could help create a more inclusive and responsive learning environment.

The Research Brief is a short take on interesting academic work.

The Conversation

Sharon Tettegah received funding from the National Science Foundation for this work. Award Abstract # 1826632
Coordinating Curricula and User Preferences to Increase the Participation of Women and Students of Color in Engineering

link

Q. Why have efforts to boost diversity in engineering programs been unsuccessful?
A. Efforts to boost diversity in engineering programs have not significantly increased the number of women, students of color, individuals with disabilities, and other underrepresented groups studying and earning degrees in STEM and engineering fields.

Q. What is the main reason for the lack of progress in increasing diversity in engineering programs?
A. The main reason is that college instructors do not consider the synergistic relationship between the content and the learner, leading to a one-size-fits-all approach to teaching.

Q. Is it true that students have different learning styles, such as kinesthetic, auditory, or visual?
A. No, more recent research does not support the idea that teaching students according to their learning style leads to improved learning. Instead, the term “learning preferences” is preferred, which allows for multiple ways of engaging with content.

Q. Why should educators consider students’ learning preferences when designing curriculum?
A. Educators should consider students’ learning preferences because it allows them to connect with engineering content in multiple ways, making the learning experience more inclusive and responsive.

Q. How can educators use technology to create diverse representations of content that cater to different learning preferences?
A. Using data mining and artificial intelligence, educators can create diverse representations of content, such as word problems, graphics, or simulations, to cater to students’ varying learning preferences.

Q. What is the potential benefit of prioritizing diverse learning perspectives in STEM education?
A. Prioritizing diverse learning perspectives in STEM education could help create a more inclusive and responsive learning environment that supports students from underrepresented groups.

Q. Why is it important for educators to view students as customers when designing curriculum?
A. Educators should view students as customers because it allows them to provide options that align with the student’s learning preferences, making the learning experience more engaging and effective.

Q. What role can adaptive learning applications play in understanding students’ learning preferences?
A. Adaptive learning applications can help understand students’ learning preferences by providing diverse representations of content and tailoring the learning experience to individual needs.

Q. How can educators ensure that curriculum design reflects the voices of all stakeholders, including instructors and students?
A. Educators should involve all stakeholders, including instructors and students, in the curriculum design process to create a truly democratic education system that reflects the diversity of learners.