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A Network Model of Knowledge Acquisition. Idea 1: a learner must thoughtfully develop a conceptual framework for their new knowledge. Idea 2 : recent research in network science leads to an understanding of the structure and dynamics of networks.
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A Network Model of Knowledge Acquisition Idea 1: a learner must thoughtfully develop a conceptual framework for their new knowledge. Idea 2: recent research in network science leads to an understanding of the structure and dynamics of networks. Networks for diverse systems share a set of common characteristics. If one assumes that acquired knowledge forms a network, then it should share these common characteristics 13th International Conference on Thinking
A key finding of “How People Learn” • To develop competence in an area students must: • have a deep foundation of factual knowledge, • b) understand facts and ideas in a context of a • conceptual framework • and • c) organize their knowledge in ways that • facilitate retrieval and application.” 13th International Conference on Thinking
Transformation of students Adaptive Expertise “Flexible Thinking” The most powerful learning occurs when we move away from inert knowledge and towards flexible thinking. Mental Structure (Context And Organization) Routine Expertise “Inert Knowledge” Novice Expert Knowledge Adapted from John Bransford and the “Center for Learning in Formal and Informal Environments”. 13th International Conference on Thinking
Number of Nodes (with k Links) Number of Links (k) Characteristics of networks What do you measure when you study a network? Average length (on connected components) Cluster coefficient Degree distribution 13th International Conference on Thinking
Three important steps in the development of network science 1950’s Paul Erdös and Alfréd Rényi Random Network 1990’s Duncan Watts and Steve Strogatz Small World Systems 2000’s Albert-László Barabási, Reka Albert and Hawoong Jeong Scale-free Networks 13th International Conference on Thinking
Random network Nodes are linked together at random. This figure has 300 nodes initially distributed around a circle and then connected in pairs at random This figure was generated using software developed by Uri Wilensky of Northwestern University and is incorporated in NetLogo: http://ccl.northwestern.edu/netlogo/models/. 13th International Conference on Thinking
(a) (b) Small world network From D. J. Watts and S.H. Strogatz, “Collective dynamics of ‘small world’ networks”, Nature, Vol. 393, No. 4, pp 440-442 (1998). 13th International Conference on Thinking
Scale-free network Network is formed by introducing new nodes connected with “preferential Attachment” This figure was generated using software developed by Uri Wilensky of Northwestern University and is incorporated in NetLogo: http://ccl.northwestern.edu/netlogo/models/. 13th International Conference on Thinking
Many nodes have this number of links Number of Nodes (with k Links) A few nodes have the max A few nodes have the min Number of Links (k) Poisson Distribution Degree distribution 13th International Conference on Thinking
Number of Nodes (with k Links) Number of Links (k) Pareto Distribution Scale-free degree distribution A large number of nodes with few links A small number of nodes with many links the hubs 13th International Conference on Thinking
Some networks studies 13th International Conference on Thinking
Network of acquired knowledge Knowledge Network – each “bit” of knowledge can be considered a node – bits are linked together in a network. – individual (like fingerprints) How does it develop? 13th International Conference on Thinking
Novice learning Each bit of new knowledge is indistinguishable from others Joined at random to already existing bits Degree distribution is Poisson Distribution so there is a maximum number of links per node. 13th International Conference on Thinking
Middle learning Some order begins to emerge but randomness remains Degree distribution is nearly a Poisson Distribution so there is a maximum number of links per node. 13th International Conference on Thinking
Expert learning Hubs begin to appear as centers of organization Degree distribution is a Pareto Distribution so there is no limit to the number of links per node. 13th International Conference on Thinking
Evolution of knowledge organization Novice Learning stages flooding of independent and indistinguishable facts, linked at random network is featureless with no organization, Poisson degree distribution implies limits to number of links for any node Middle Learning stages as relationships among facts are observed information begins to cluster randomness is replaced with order, leading to a small world structure Poisson degree distribution implies limits to number of links for any node Expert Learning Stages thoughtful organization creates hubs and a scale free network Pareto distribution implies no limit to facts linked to a hub this is the transition advocated in “How People Learn” 13th International Conference on Thinking
Middle Learning Expert Learning Novice Learning Random Network Small World Network Scale Free Network Development of a knowledge network Structureless Clusters Hubs Bounded range Bounded Range Unbounded Range 13th International Conference on Thinking
How this influences learning ... Learners now – • have a model of how the organization of knowledge evolves • can assess their level of organization of knowledge • can guide the improvement of their organization of concepts • can discuss conceptual structures with others 13th International Conference on Thinking
Understand the importance of learning for transfer the organization of acquired knowledge is a complex network which crosses disciplines Understand the importance of assessing learners prior knowledge new learning is linked to what is known 13th International Conference on Thinking