The posting below looks at how what we know about learning can be incorporated into the new MOOCs (massive online open course) approach. It is by Marilla Svinicki University of Texas at Austin and is #63 in a series of selected excerpts from The NT&LF reproduced here as part of our \\"Shared Mission Partnership.\\" NT&LF has a wealth of information on all aspects of teaching and learning. If you are not already a subscriber, you can check it out at [http://ntlf.com/about.aspx] The on-line edition of the Forum - like the printed version - offers subscribers insight from colleagues eager to share new ways of helping students reach the highest levels of learning. National Teaching and Learning Forum Newsletter, December 23, 2012. Copyright ©John Wiley & Sons, Professional and Trade Subscription Content, One Montgomery Street, Suite 1200, San Francisco, CA 94104-4594. Reprinted with permission.
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MOOCs: What Part of Learning Goes on Where and How?
My university just announced that we have joined a MOOC (massive online open course, for those of you who like me didn't know what the acronym stood for). Specifically we joined EDx. The decision was made at a level far above my pay grade. No one asked my opinion, which is actually a good thing because I'm not sure what my opinion is at this point.
There are lots of good, altruistic reasons for higher education to take this step. The intent is to make high level education available widely at a very low cost to the consumer (not to the institution, by the way). We've seen how freer access to more information has put the fear of Truth into even the most dictatorial systems to the extent that they attempt to shut it down as fast as they can and find that they can't. I like that part. I also like the possibility that freer access to information that is based on solid research and realistic thinking might empower people to be less subject to thinking based on superstitions and misinformation (not that it's working that well here). More selfishly, I like the idea that really good teachers could be challenged to change the way they think about learning and put their talents to work finding new ways to structure learning environments that can handle the ever-expanding population of students with widely varying backgrounds.
But I think there may be lots of good reasons for us to take this step more slowly. Despite all the miraculous claims of how transformative technology can be, right now there is still a lot of work to do. Even the very successful Khan Academy is founded on a lot of delivery of information, granted by a very gifted deliverer. But information is not synonymous with understanding, and delivery is not synonymous with education. So before I rush into volunteering to create courses for our new MOOC, I thought as an educational psychologist I might take a crack at analyzing what I know about learning that needs to be considered in the process. Here it goes.
Learning means focusing attention on the key concepts in a topic. OK, online learning can take advantage of the magic of visual images and presentation strategies to highlight key ideas and put them in a form that will not only draw learner attention but create memorable images that will be easy to recall later. Check!
Learning means making connections with a learner's prior knowledge. Hmmm, maybe not so easy here. Given the size and diversity of the audience for a MOOC, being able to make those connections in the presentation itself is going to be difficult. It's possible that one of the affordances of technology-gathering and analyzing data-might make this possible. After all Amazon can keep track of the books and other things I buy and point me toward other books of the same genre or that other people like me (i.e., those who bought the same things I bought) liked. So it might be possible in the future for an online course to analyze the kinds of interests and background I have (from a population perspective) and offer me links from the information of this course to other examples on the web that are related to it. I'm pretty sure that doesn't exist in the programming yet, but it could. It might take a while to build up enough of a database (computers ARE good at collecting data) to make those predictions, but it's possible.
Learning means actively processing the incoming information, digesting it, working with it, summarizing, paraphrasing, applying it. Yes, that works online, too, provided the information delivery part of the course leads to opportunities for the learners to try out the ideas in various ways. Most online classes have finally gotten around to realizing that just listening to information is not the process of learning. As a result most of them include activities for the learners. That's good, but here's the stumbling block.
Learning also requires that the learners' attempts receive guiding feedback. Uh-oh. That works pretty well in areas where there are "correct" answers that can be evaluated readily by a computer, but there's a ways to go before it works in more complex content that involves decisions and judgments. I actually ran into this problem recently in a project to provide instruction in teaching to adjunct faculty using an online program. It was easy to respond to questions that had simple answers, like who suggested the idea of the Zone of Proximal Development (Lev Vygotsky). But evaluating the significance of the ZPD for teaching requires a whole other level of sophistication from the learners. Not so easy to anticipate all the things a learner might offer as important. This is not to say that it can't be done, but rather that it can't be done so easily YET. There are ways of providing electronic feedback to this kind of active learning. Our solution was to provide examples of answers that would fit the task and let the learners compare theirs. Not totally satisfying and sometimes not totally accurate.
There are some possibilities to consider when contemplating this issue of feedback. One is the "community of learners" possibility. I think in the vernacular of MOOCs this would be called "crowd sourcing." It's a more elaborate version of peer feedback, where the large group of learners respond to one another's ideas in hopes of finding some kind of consensus. I think this probably works in an informed community of participants where there is a distribution of prior knowledge that can be drawn on. I think a community of novices still needs the guidance of a more informed individual or group of individuals.
Another possibility that has been around, but not perfected in education yet is artificial intelligence providing individual tutoring based on expert models and language matching. A new wrinkle that might make this more feasible is the idea of learning analytics and large databases. When this idea first came around, I was fascinated, but skeptical. I have seen too many really strange thought trails in my students writing to believe that even a computer could follow and guide them. But possibly the computer just needs more information to develop a case inventory of potential student ideas. I guess if they can create a computer that can win at Jeopardy, they can figure out how to interpret student responses to open ended questions. But I (and many other psychologists) believe that the essence of deep learning is in the interaction with others as we grapple with what we think we know versus what we really know. That's the kind of online learning I'd like to see us build.
So am I going to try this thing? I'm conflicted. I see a lot of possibilities, but we are definitely not there yet. The technology world might be there, but those of us in education take longer to learn. Too busy giving guided feedback.