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The New Literacy: Stanford study finds richness and complexity in students' writing
The New Literacy: Stanford study finds richness and complexity in students' writing
Young people write more than they used to, and they don't just write when it's required. The study also found that spelling errors aren't as much of a problem as they were 20 years ago, now that spell check software is easily accessible.
Today's kids don't just write for grades anymore. They write to shake the world. Moreover, they are writing more than any previous generation, ever, in history. They navigate in a bewildering new arena where writers and their audiences have merged.
For these students, "Good writing changes something. It doesn't just sit on the page. It gets up, walks off the page and changes something," whether it's a website or a poster for a walkathon.
·physorg.com·
The New Literacy: Stanford study finds richness and complexity in students' writing
You call this Academic Honesty? | Webb of Thoughts
You call this Academic Honesty? | Webb of Thoughts
Great example of why I get so frustrated when I hear people complaining about how terrible it is that students copy and paste content. I'd like to see the teachers and professors stop using uncited content themselves first; I see a lot more problems with people with graduate degrees. This lecturer on effective writing plagiarized content for handouts while simultaneously admonishing students to not plagiarize.
·kylewebb.edublogs.org·
You call this Academic Honesty? | Webb of Thoughts
Twenty-two power laws of the emerging social economy | Enterprise Web 2.0 | ZDNet.com
Twenty-two power laws of the emerging social economy | Enterprise Web 2.0 | ZDNet.com
Power laws describing how networks and social networking work, some supported by research, some simply observations of human behavior
Amara’s Law (<a href="http://en.wikipedia.org/wiki/Roy_Amara">backstory</a>) states that “<em>we tend to overestimate the effect of a technology in the short run and underestimate the effect in the long run.</em>”
<h2>11. Metcalfe’s Law</h2> <p>This was the original conception of network effects, whereby the potential value of a network grows exponentially according to its size.</p>
The fundamental definition of a <a href="http://en.wikipedia.org/wiki/Network_effect">network effect</a> is “<em>when a product or service has more value the more that other people have it too.</em>”
In fact, the <a href="http://en.wikipedia.org/wiki/Principle_of_least_effort">Principle of Least Effort</a> notes that they will tend to use the most convenient method, in the least exacting way available, with interaction stopping as soon as minimally acceptable results are achieved. As a result, well-known social scientist <a href="http://blogs.wsj.com/buzzwatch/2008/05/05/wisdom-on-crowds-what-ceos-need-to-know-about-the-social-web/">Clay Shirky notes</a> that the most “brutally simple” social model often is the most successful one (using Twitter as an example.)
<h2>Reed’s Law</h2> <p>Researcher David Reed <a href="http://en.wikipedia.org/wiki/Reed%27s_law">discovered that</a> the network effect of social systems is much higher than would otherwise be expected, helping to explain the sudden rise of social systems in the latter half of this decade. While adding a social architecture to a piece of software for no specific reason isn’t helpful either, it turns out that in general, software (and indeed, any networked system) is better the more social it is.</p>
Reflexivity asserts that social actions can and do in fact influence the fundamental behavior of a social system and that these newly-influenced set of fundamentals can then proceed to change expectations, thus influencing new behavior. The process continues in a self-reinforcing pattern.
·blogs.zdnet.com·
Twenty-two power laws of the emerging social economy | Enterprise Web 2.0 | ZDNet.com
Learning Networks and Connective Knowledge
Learning Networks and Connective Knowledge
Long paper by Stephen Downes on the nature of knowledge, connectivism, learning, and e-learning 2.0
In other words, cognitivists defend an approach that may be called ‘<a href="http://plato.stanford.edu/entries/folkpsych-theory/">folk psychology</a>’. “In our everyday social interactions we both predict and explain behavior, and our explanations are couched in a mentalistic vocabulary which includes terms like ‘belief’ and ‘desire’.” The argument, in a nutshell, is that the claims of folk psychology are literally true, that there is, for example, an entity in the mind corresponding to the belief that 'Paris is the capital of France', and that this belief is, in fact, what might loosely be called 'brain writing' - or, more precisely, there is a one-to-one correspondence between a person's brain states and the sentence itself.
I've never heard cognitivism compared to "folk psychology" before. I'm not totally convinced by this argument. Cognitivist methods do have some research support, after all. (Think multimedia learning, Clark & Mayer's "ELearning and the Science of Instruction.") But their methods could (at least sometimes) be right even if their explanation of the underlying mechanism is wrong.
We may contrast cognitivism, which is a <i>causal</i> theory of mind, with connectionism, which is an <a href="http://en.wikipedia.org/wiki/Emergentism"><i>emergentist</i></a> theory of mind. This is not to say that <a href="http://en.wikipedia.org/wiki/Connectionism">connectionism</a> (see <a href="http://plato.stanford.edu/entries/connectionism/">also</a>) does away with causation altogether; it is not a ‘hand of God’ theory. &nbsp;It allows that there is a physical, causal connection between entities, and this is what makes communication possible. But where it differs is, crucially: <i>the transfer of information does not reduce to this physical substrate</i>. Contrary to the communications-theoretical account, the new theory is a non-reductive theory. The contents of communications, such as sentences, <i>are not isomorphic</i> with some mental state.
From Wikipedia: "A property of a system is said to be emergent if it is more than the sum of the properties of the system's parts." If I understand Stephen's argument correctly, part of what he's saying here is that rather than knowledge being exactly what we perceive it to be (a sentence like "Paris is a city in France"), what's happening in our brains is more than that. When a teacher shares knowledge with a learner, it doesn't work like a copy machine where the teacher gives the learner a duplicate of the original and then both people have discrete copies of that knowledge.
For example (and there are <i>many</i> we could choose from), consider Randall O’Reilly on how the brain represents conceptual structures, as described in <a href="http://psych.colorado.edu/%7Eoreilly/papers/OReillyIPap.pdf">Modeling Integration and Dissociation in Brain and Cognitive Development</a>. He explicitly rejects the ‘isomorphic’ view of mental contents, and instead describes a network of distributed representations. "Instead of viewing brain areas as being specialized for specific representational content (e.g., color, shape, location, etc), areas are specialized for specific computational functions by virtue of having different neural parameters...
I struggle a bit with the neurological arguments, but it does seem to make sense that the brain is divided by the different functions and not by the symbols we've created to communicate. And certainly when you look at brain scans of people doing different tasks, the activity isn't just in one area: multiple areas of the brain are involved in any complex task. But I'm also cautious about the brain evidence because, frankly, I don't really understand it that well. I'm also aware of research about how people find arguments more convincing when they're shown with pictures of brain scans, even if it's the same text. I don't want to fall prey to that fallacy.
For example, when I say, "What makes something a learning object is how we <i>use</i> the learning object," I am asserting a functionalist approach to the definition of learning objects (people are so habituated to essentialist definitions that my definition does not even appear on lists of definitions of learning objects).<br><br>It's like asking, what makes a person a 'bus driver'? Is it the colour of his blood? The nature of his muscles? A particular mental state? No - according to functionalism, what makes him a 'bus driver' is the fact that he drives buses. He performs that <i>function</i>.
These are better examples; this makes more sense to me. It does seems to support creating learning environments where content can be used multiple different ways, which fits with connectivism.
To illustrate this concept, I have been asking people to think of the concept 'Paris'. If 'Paris' were represented by a simple symbol set, we would all mean the same thing when we say 'Paris'. But in fact, we each mean a collection of different things and none of our collections is the same. Therefore, in our own minds, the concept 'Paris' is a loose association of a whole bunch of different things, and hence the concept 'Paris' exists in no particular place in our minds, but rather, is scattered throughout our minds.
Back to the cognitivist idea of the teacher as mental copy machine handing a student a duplicate copy of knowledge--this is the opposite of that. It's more like if 20 artists sit down to draw the same scene; there will be similarities and overlaps, but nobody's picture will be the same. This is, perhaps, part of why connectivism makes more sense when applied to learning complex topics. You don't need connectivism to explain memorizing the state capitals or multiplication tables; the idea of the mental copy machine is probably a functional enough explanation. But if you're trying to learn a big, gnarly topic, a model that works for regurgitating facts isn't enough.
<p><font face="Arial"><font style="font-size: 11pt;" size="2">As we examine the emergentist theory of mind we can arrive at five major implications of this approach for educational theorists:</font></font></p> <p><font style="font-size: 11pt;" size="2"><font face="Arial">- first, knowledge is <a href="http://www.ai.rug.nl/%7Elambert/projects/miami/taxonomy/node99.html">subsymbolic</a>. Mere possession of the words does not mean that there is knowledge; the possession of knowledge does not necessarily result in the possession of the words (and for much more on this, see Michael Polanyi's discussion of '<a href="http://artsci.wustl.edu/%7Ephilos/MindDict/tacitknowledge.html">tacit knowledge</a>' in '<a href="http://www.amazon.ca/Personal-Knowledge-Towards-Post-Critical-Philosophy/dp/product-description/0226672883">Personal Knowledge</a>').</font></font></p> <p><font style="font-size: 11pt;" size="2"><font face="Arial">- second, knowledge is distributed. There is no specific 'mental entity' that corresponds to the belief that 'Paris is the capital of France'. What we call that 'knowledge' is (an indistinguishable) pattern of connections between neurons. See, for example, Geoffrey Hinton, '<a href="http://www.cs.toronto.edu/%7Ehinton/distrep.html">Learning Distributed Representations of Concepts</a>'.</font></font></p> <p><font style="font-size: 11pt;" size="2"><font face="Arial">- third, knowledge is interconnected. The same neuron that is a part of 'Paris is the capital of France' might also be a part of 'My dog is named Fred'. It is important to note that this is a non-symbolic interconnection - this is the basis for non-rational associations, such as are described in the recent Guardian article, '<a href="http://www.guardian.co.uk/life/feature/story/0,13026,1517186,00.html">Where Belief is Born</a>'</font></font></p> <p><font style="font-size: 11pt;" size="2"><font face="Arial">- fourth, knowledge is personal. Your 'belief' that 'Paris is the capital of France' is quite literally different from my belief that 'Paris is the capital of France'. If you think about it, this must be the case - otherwise <a href="http://en.wikipedia.org/wiki/Gestalt_psychology">Gestalt tests</a> would be useless; we would all utter the same word when shown the same picture.</font></font></p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">- fifth, what we call 'knowledge' (or 'belief', or 'memory') is an emergent phenomenon. Specifically, it is not 'in' the brain itself, or even 'in' the connections themselves, because there is no 'canonical' set of connections that corresponds with 'Paris is the capital of France'. It is, rather (and carefully stated), a recognition of a pattern in a set of neural events (if we are introspecting) or behavioural events (if we are observing). We infer to mental contents the same way we watch Donald Duck on TV - we think we see something, but that something is not actually there - it's just an organization of pixels.</font></font></p>
If this is the case, then the concepts of <i>what it is to know</i> and <i>what it is to teach</i> are very different from the traditional theories that dominate distance education today. Because if learning is not the transfer of mental contents – if there is, indeed, no such mental content that exists to be transported – then we need to ask, what is it that we are attempting to do when we attempt to teach and learn.
I'm finding myself resisting some of these ideas, and I'm not quite sure why. Is it because it's so different from what I've been taught and assumed? Is it because I'm just too used to the folk psychology ideas and I need to unlearn them? I still feel like even cognitivism is a "good enough" explanation for some basic kinds of knowledge that do seem to operate as content transfer. Cognitivism isn't a perfect model, but a simple knowledge transfer model might be good enough for some areas. But maybe education has focused too much on the simple knowledge transfer because it's easy and we have an easy model to explan how it works--and education should be about a lot more than the kinds of learning that cognitivism explains well. The learning theories we believe must affect what we choose to teach, and not just how we choose to teach it.
<p><font face="Arial"><font style="font-size: 11pt;" size="2">we can identify the essential elements of network semantics.</font></font></p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">First, <i>context</i>, that is, the localization of entities in a network. Each context is unique – entities see the network differently, experience the world differently. Context is required in order to interpret signals, that is, each signal means something different depending on the perspective of the entity receiving it.</font></font></p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">Second, <i>salience, </i>that is, the relevance or importance of a message. This amounts to the similarity between one pattern of connectivity and another. If a signal creates the activation of a set of connections that were previously activated, then this signal is salient. Meaning is created from context and messages via salience. </font></font> </p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">Third, <i>emergence,</i> that is, the development of patterns in the network. Emergence is a process of resonance or synchronicity, not creation. We do not <i>create</i> emergent phenomena. Rather emergence phenomena are more like commonalities in patterns of perception. It requires an interpretation to be recognized; this happens when a pattern becomes <i>salient</i> to a perceiver.</font></font></p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">Fourth, <i>memory </i>is the persistence of patterns of connectivity, and in particular, those patterns of connectivity that result from, and result in, salient signals or perceptions.</font></font></p>
Earlier in this section, Stephen says that the constructivist idea of "making meaning" is meaningless. But here he says "Meaning is created from context and messages via salience." What's the difference between "making meaning" and "creating meaning"? I don't get it.
For example, in order to illustrate the observation that ‘knowledge is distributed’ I have frequently appealed to the story of the 747. In a nutshell, I ask, “who knows how to make a 747 fly from London to Toronto?” The short answer is that <i>nobody</i> knows how to do this – no one person could design a 747, manufacture the parts (including tires and aircraft engines), take it off, fly it properly, tend to the passengers, navigate, and land it successfully. The knowledge is <i>distributed</i> across a network of people, and the phenomenon of ‘flying a 747’ can exist at all only because of the connections between the constituent members of that network.
This is an example of complicated knowledge, I think, and not complex, but the idea of complicated knowledge being distributed makes sense.
<p>“<font style="font-size: 11pt;" size="2"><font face="Arial">What happens,” I asked, “when online learning ceases to be like a medium, and becomes more like a platform? What happens when online learning software ceases to be a type of content-consumption tool, where learning is "delivered," and becomes more like a content-authoring tool, where learning is created?”</font></font></p> <p><font face="Arial"><font style="font-size: 11pt;" size="2">The answer turns out to be a lot like Web 2.0: “The model of e-learning as being a type of content, produced by publishers, organized and structured into courses, and consumed by students, is turned on its head. Insofar as there is content, it is used rather than read— and is, in any case, more likely to be produced by students than courseware authors. And insofar as there is structure, it is more likely to resemble a language or a conversation rather than a book or a manual.”</font></font></p>
Summary of e-learning 2.0, although so much of what is being developed is still about content consumption
The idea behind the personal learning environment is that the management of learning migrates from the institution to the learner.
Learning therefore evolves from being a transfer of content and knowledge to the production of content and knowledge.
I'm not sure if learning always has to be about the "production" of content by the learners; it could be about analyzing, summarizing, aggregating, tagging, etc. Am I really "producing content" with my comments on this article? I don't feel like I'm producing something new, but I definitely feel like this is e-learning 2.0. I'm building on Downes' work. But maybe my problem is with how I'm defining "content"; if "content" includes tagging and critiquing and commenting, then I am producing content now.
In a distributed environment, however, the design is no longer defined as a type of process. Rather, designers need to characterize the <a href="http://www.cetis.ac.uk/content2/20050124115817">nature of the <i>connections</i></a> between the constituent entities.
An interesting idea for instructional design. Usually a big part of what we do as instructional designer is think about the structure and order of learning objects. But if the learning objects are scattered in different places and nonsequential, then the support learners need isn't being told what order to follow: it's how the objects relate to each other.
In effective networks, content and services are <i>disaggregated</i>. Units of content should be as small as possible and content should not be ‘bundled’. Instead, the organization and structure of content and services is created by the receiver.
The problem from everyone who has tried reusable learning objects is that it's so hard to get objects that are really independent and free of context. I think this is a very difficult thing to actually achieve.
An effective network is <i>desegregated</i>. For example, in network learning, learning is not thought of as a Separate Domain. Hence, there is no need for learning-specific tools and processes. Learning is instead thought of as a part of living, of work, of play. The same tools we use to perform day-to-day activities are the tools we use to learn.
This is already happening to some extent. Blogs, wikis, and Twitter weren't designed as learning tools, but lots of people use them as such. A look at Jane Hart's top tools collection shows lots of tools used by learning professionals that weren't originally intended for learning.
Knowledge is a network phenomenon. To 'know' something is to be organized in a certain way, to exhibit patterns of connectivity. To 'learn' is to acquire certain patterns.
If learning is about acquiring patterns, then the "to learn is to practice and reflect" would be ways of following and reinforcing those patterns. I suspect for this to really make sense that "pattern" has to be my individual pattern as a learner; my pattern isn't the same as Stephen's, even as I'm learning from him. But my pattern might be similar to Stephen's or overlap with his, or connect with his.
<tr><td><p align="CENTER"><font face="Arial"><font style="font-size: 11pt;" size="2"><b>Downes Educational Theory</b></font></font></p> </td> </tr> <tr> <td> <p><font face="Arial"><font style="font-size: 11pt;" size="2">A good student learns by practice, practice and reflection.<br>A good teacher teaches by demonstration and modeling.<br>The essence of being a good teacher is to be the sort of person you want your students to become.<br>The most important learning outcome is a good and happy life.</font></font></p></td></tr>
One thing I've been wrestling with a bit lately is the idea of teachers demonstrating and modeling. It seems like demonstrating and modeling are mostly the same thing. What's the difference between the two? And I do feel like "teacher" implies something a little more active than being a model off in the distance. What if we say that good teachers model and nurture instead? Nurturing doesn't imply direct instruction or even most of what we think of as teaching, but it does imply interacting with students in ways that supports them and helps bring out the best in them.
In essence, on this theory, to learn is to immerse oneself in the network. It is to expose oneself to <i>actual</i> instances of the discipline being performed, where the practitioners of that discipline are (hopefully with some awareness) <i>modeling </i>good practice in that discipline. The student then, through a process of interaction with the practitioners, will begin to <i>practice</i> by replicating what has been modeled, with a process of <i>reflection</i> (the computer geeks would say: <a href="http://www.seattlerobotics.org/encoder/nov98/neural.html">back propagation</a>) providing guidance and correction.
This description is helpful, but I again don't see how demonstrating is different from modeling.
These environments cut across disciplines. Students will not study algebra beginning with the first principles and progressing through the functions. They will learn the principles of algebra <a href="http://www.downes.ca/cgi-bin/page.cgi?post=41">as needed</a>, progressing more deeply into the subject as the need for new knowledge is provoked by the demands of the simulation. Learning opportunities - either in the form of interaction with others, in the form of online learning resources (formerly known as learning objects), or in the form of interaction with mentors or instructors - will be embedded in the learning environment, sometimes presenting themselves spontaneously, sometimes presenting themselves on request.
This reinforces what Stephen said earlier about tools not being specific to learning; learning tools should be the tools we live and work and play with, integrated in our daily lives.
This does not mean that a 'science' of learning is impossible. Rather, it means that the science will be more like meteorology than like (classical) physics. It will be a science based on modeling and simulation, pattern recognition and interpretation, projection and uncertainty.
This is in the postscript about the futility of traditional empirical research on learning. Maybe this is where I run into problems reconciling the cognitivist research I've read (which is all traditional "change one variable" research) with connectivism. This would also explain why some of the cognitivist research that works OK in a lab environment fails in real classrooms; a lab environment doesn't actually reflect the chaos of a classroom well enough. I've heard Stephen make this argument on a number of occasions, but I've always assumed that it meant any educational research would be worthless. That isn't what he's saying though; he's saying that educational research is a different type of research. Now it's finally making sense to me; of course educational research should be more like psychology, where we have trends and patterns but few absolutes.
·it.coe.uga.edu·
Learning Networks and Connective Knowledge
Online education horror stories worthy of Halloween: A short list of problems and solutions in online instruction
Online education horror stories worthy of Halloween: A short list of problems and solutions in online instruction

Horror stories from online education. The article is from 2001, but the information on volatile students and online conflict is still very relevant. Some of the characteristics of problem students discussed in this higher ed context would be just as applicable in corporate training.

"We have noticed that volatile students manifest clear symptoms: (a) a low frustration threshold, (b) a sense that they are victims of technology or other peoples' lack of understanding and (c) a tendency to overstate problems, overreact to them, and lash out."

·imrl.usu.edu·
Online education horror stories worthy of Halloween: A short list of problems and solutions in online instruction
CCK09: What about teaching?
CCK09: What about teaching?
Stephen Downes on connectivism and teaching, arguing that this theory isn't really about classroom teaching.
This theory is, first and foremost, a theory about learning. This is why I tweeted a few weeks ago that people - including teachers - should be viewing Connectivism as a theory describing how to <span style="font-style: italic;">learn</span>, not how to teach. And what it says about learning, essentially, is that you should immerse yourselve in the relevant environment, observe and practice the common actions in that environment, and reflect on that practice.
So - insofar as there is a pedagogy attached to Connectivism, I content that it involves more and more removing students from a structured and managed classroom environment, and more and more providing means for them to be immersed in communities of practitioners, and for this to happen at a younger and younger age, and in addition, to more and more create in practitioners the expectation and responsibility of working openly and including new and inexperienced members into their communities.
So to me, an answer to the question "What impact does networked learning have on *in class* activity?" should be, "it eliminates it". <br><br>Now I realize that this is not helpful to teachers looking for tips and tricks for in-class activities. Such teachers, I contend, shpuld be looking for eays of moving their students out of their classrooms and into authentic learning environments, while at the same time fostering the communicative and reasoning skills (which has often been neglected) that will enable them to begin participating in such environments.
·ltc.umanitoba.ca·
CCK09: What about teaching?
Clive on Learning: E-Learning Debate 2009
Clive on Learning: E-Learning Debate 2009
Summary of a debate on e-learning, where most of the negative arguments seemed to be that crappy "click next" e-learning is ineffective but the positive arguments didn't seem much more compelling. Some good quotes though.
An LMS is just an e-learning vending machine.
The debate is not about whether e-learning is useful or efficient, but whether the e-learning of today will meet the skills of tomorrow.
·clive-shepherd.blogspot.com·
Clive on Learning: E-Learning Debate 2009
Dave’s Whiteboard » Blog Archive » 21st-century skills: Downes’s OS for the mind
Dave’s Whiteboard » Blog Archive » 21st-century skills: Downes’s OS for the mind
Dave Ferguson pulls out big ideas from Stephen Downes' "OS for the mind" essay. Essentially, the argument is that we need to teach more than just facts: we need to teach people what to do with facts.
<li><strong>You can learn to tell fact from non-fact. </strong>Detecting deception (or, I think, error, or misrepresentation) is a skill, Downes says, “and you need just as much as your computer needs to be able to detect malware.”</li> <li><strong>You’ve gotta decide.</strong> This point is key: decision-making isn’t rote performance, which means it’s not based solely on facts.</li>
·daveswhiteboard.com·
Dave’s Whiteboard » Blog Archive » 21st-century skills: Downes’s OS for the mind
eLearn: Best Practices - Discussion Management Tips for Online Educators
eLearn: Best Practices - Discussion Management Tips for Online Educators
Tips for online facilitators, especially relevant for those used to teaching in a physical classroom who are moving online. Good practical stuff here like saving some of your best stories to re-energize students when motivation is lagging late in the course and preparing discussion questions and replies in advance.
·elearnmag.acm.org·
eLearn: Best Practices - Discussion Management Tips for Online Educators