| Literature DB >> 35573722 |
Helen Zhang1, Irene Lee2, Safinah Ali3, Daniella DiPaola3, Yihong Cheng1, Cynthia Breazeal3.
Abstract
The rapid expansion of artificial intelligence (AI) necessitates promoting AI education at the K-12 level. However, educating young learners to become AI literate citizens poses several challenges. The components of AI literacy are ill-defined and it is unclear to what extent middle school students can engage in learning about AI as a sociotechnical system with socio-political implications. In this paper we posit that students must learn three core domains of AI: technical concepts and processes, ethical and societal implications, and career futures in the AI era. This paper describes the design and implementation of the Developing AI Literacy (DAILy) workshop that aimed to integrate middle school students' learning of the three domains. We found that after the workshop, most students developed a general understanding of AI concepts and processes (e.g., supervised learning and logic systems). More importantly, they were able to identify bias, describe ways to mitigate bias in machine learning, and start to consider how AI may impact their future lives and careers. At exit, nearly half of the students explained AI as not just a technical subject, but one that has personal, career, and societal implications. Overall, this finding suggests that the approach of incorporating ethics and career futures into AI education is age appropriate and effective for developing AI literacy among middle school students. This study contributes to the field of AI Education by presenting a model of integrating ethics into the teaching of AI that is appropriate for middle school students. © International Artificial Intelligence in Education Society 2022.Entities:
Keywords: AI ethics; Bias; Career implications; Middle school education; Sociotechnical systems
Year: 2022 PMID: 35573722 PMCID: PMC9084886 DOI: 10.1007/s40593-022-00293-3
Source DB: PubMed Journal: Int J Artif Intell Educ ISSN: 1560-4292
Fig. 1The organization of key AI concepts covered in DAILy curriculum
DAILy curriculum: interweaving of AI concepts, ethics, and careers
| Module 1: Introduction (3 h) | AI concepts | Learn an age-appropriate definition of AI; Discern instances in everyday life that utilize AI |
| Ethics | Design an algorithm to make "the best" peanut butter and jelly sandwiches; Exercise the understanding of algorithms and stakeholders in algorithmic decision making | |
Module 2: Logic Systems (4 h) | AI concepts | Learn how to create Decision Trees by classifying pasta by its key features; Test their tree's ability to sort new pasta type; Imagine examples of using classification in real life |
| Ethics | Identify how the features selected impact the decision trees' overall structure and pasta classification capabilities; Discuss how bias can seep into decision trees by people who make different choices of features and how to mitigate bias | |
| Careers | Imagine and share what the future careers might be | |
| Module 3: Supervised Learning with Teachable Machine (6 h) | AI concepts | Learn the definition of machine learning; Train a supervised learning model of image classification in Teachable Machine; Experiment with developing different classifiers of image, sound, or gesture data in Teachable Machine |
| Ethics | Experiment with using imbalanced datasets to train models using Teachable Machine and compare with the models trained using more balanced datasets; Discuss how to mitigate the bias and generalize to other examples of algorithmic bias | |
| Careers | Create an inventory of themselves by identifying their strengths, weaknesses, and interests; Find and explore careers that match their strengths and interests | |
| Module 4: Supervised Learning with Neural Networks (3 h) | AI concepts | Participate in a game where students play the role of nodes in the NN and "train" the NN to caption images; Reflect the process involved in the game and learn the structure and functioning of neural networks |
| Ethics | Explore where and how the NN system can be biased; Watch a video of an interview with experts working on AI ethics | |
| Careers | Watch a video about how AI transforms a truck-driver’s work; Explore how their matched careers are/will be impacted by AI; Share and discuss exploration findings with peers | |
| Module 5: Unsupervised Learning and Generative AI (14 h) | AI concepts | Learn about Generative Adversarial Networks (GANs) through examples of generated art, images, faces, videos and sounds; Play a simulation game where they play the roles of generators and/or discriminators to see how generator and discriminator network in a GAN works; Experiment with a web tool to train their own text generator in a text style of their choice; Learn about how misinformation and fake news is generated and how it spreads through a digital game |
| Ethics | Discuss the ownership of machine-generated art; Collectively play a game to understand societal consequences of AI-generated media | |
| Careers | Watch videos of people working in arts and media who use AI in work; Discuss fields that AI skills are applicable and how creativity is applied; Create a career roadmap to outline steps, resources, and potential barriers along their pathway to a career in the future AI era |
Fig. 2A student’s construction of a Decision Tree to uniquely classify pasta during the Pastland activity (in progress)
Fig. 3The online Artificial Neural Network Game during play
Example AI-CI questions
Categorization student ideas of what AI is
| Category | Description | Example student explanations |
|---|---|---|
| Incorrect | wrong ideas or naïve ideas around artificial intelligence | |
| Vague | vague ideas about AI | |
| Societal | Focuses on the societal or ethical implications of AI | |
| General | Focuses on the general definition of AI, e.g., correct reference to human intelligence (viewing AI as explicitly different from human intelligence) | |
| Technical | Focuses on the technical skills and knowledge around AI (e.g., data, algorithm, prediction) | |
| Complex | Includes two or more correct ideas about social, general, or technical aspects of AI |
Fig. 4Percentages of students who defined AI incorrectly, vaguely, in terms of societal impact, in relation to human intelligence, in terms of technical structure, and “complex,” meaning two or more references to societal, general, and technical definitions on the pre and posttest
Paired t-test results of student performance on AI-CI before and after the DAILy workshop
| Scale | Pre | Post | Paired t-test results | Effect size (Cohen’s | ||
|---|---|---|---|---|---|---|
| Mean | SD | Mean | SD | |||
| Aggregate (total score = 38) | 23.69 | 4.61 | 26.05 | 4.34 | t(24) = 3.37, | .53 |
| AI general concepts (total score = 12) | 7.96 | 1.73 | 8.56 | 1.55 | t(24) = 1.56, | .37 |
| Logic systems (total score = 4) | 2.6 | 1.11 | 2.99 | .76 | t(24) = 2.27, | .41 |
| ML general concepts (total score = 6) | 4 | 1.04 | 4.44 | 1.53 | t(24) = 1.74, | .34 |
| Supervised learning (total score = 8) | 4.04 | 1.43 | 4.6 | 1.5 | t(24) = 1.51, | .38 |
| NN (total score = 4) | 2.89 | 1.33 | 2.87 | 1.14 | t(24) = -.10, | .02 |
| GANs (total score = 4) | 2.38 | .82 | 2.67 | 1.00 | t(24) = 1.50, | .32 |
Fig. 5Percentages of students who answered the Recognizing AI questions correctly on pre and posttest
Fig. 6Percentages of students who answered the supervised and unsupervised learning questions correctly in one, two, or three technology examples on the pre and post-tests
Student performance on the Attitudes toward AI and Career Futures surveys before and after the DAILy workshop (higher score indicates more agreement with the problem statement, total score = 5)
| Scale | Pre | Post | Paired t-test results | ||
|---|---|---|---|---|---|
| Mean | SD | Mean | SD | ||
| Interest in AI | 3.56 | .48 | 3.56 | .73 | t(24) = .04, |
| Relevance of AI to their life | 3.84 | .47 | 3.85 | .40 | t(24) = .06, |
| *Anxiety about AI | 2.48 | .68 | 2.53 | .74 | t(24) = .32, |
| AI career awareness | 3.15 | .68 | 3.48 | .60 | t(24) = 3.81, |
| Career adaptability | 3.82 | .55 | 3.85 | .61 | t(24) = .19, |
*A higher score (maximum = 5) in Anxiety about AI means higher anxiety