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  1. Understanding Human Navigation Using Network Analysis.S. R. Sudarshan Iyengar, C. E. Veni Madhavan, Katharina A. Zweig & Abhiram Natarajan - 2012 - Topics in Cognitive Science 4 (1):121-134.
    We have considered a simple word game called the word-morph. After making our participants play a stipulated number of word-morph games, we have analyzed the experimental data. We have given a detailed analysis of the learning involved in solving this word game. We propose that people are inclined to learn landmarks when they are asked to navigate from a source to a destination. We note that these landmarks are nodes that have high closeness-centrality ranking.
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  • The Large‐Scale Structure of Semantic Networks: Statistical Analyses and a Model of Semantic Growth.Mark Steyvers & Joshua B. Tenenbaum - 2005 - Cognitive Science 29 (1):41-78.
    We present statistical analyses of the large‐scale structure of 3 types of semantic networks: word associations, WordNet, and Roget's Thesaurus. We show that they have a small‐world structure, characterized by sparse connectivity, short average path lengths between words, and strong local clustering. In addition, the distributions of the number of connections follow power laws that indicate a scale‐free pattern of connectivity, with most nodes having relatively few connections joined together through a small number of hubs with many connections. These regularities (...)
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  • Organization, development and function of complex brain networks.O. Sporns, D. R. Chialvo, M. Kaiser & C. C. Hilgetag - 2004 - Trends in Cognitive Sciences 8 (9):418-425.
  • Language networks: Their structure, function, and evolution.Ricard V. Solé, Bernat Corominas-Murtra, Sergi Valverde & Luc Steels - 2010 - Complexity 15 (6):20-26.
  • Probabilistic models of cognition: Conceptual foundations.Nick Chater & Alan Yuille - 2006 - Trends in Cognitive Sciences 10 (7):287-291.
    Remarkable progress in the mathematics and computer science of probability has led to a revolution in the scope of probabilistic models. In particular, ‘sophisticated’ probabilistic methods apply to structured relational systems such as graphs and grammars, of immediate relevance to the cognitive sciences. This Special Issue outlines progress in this rapidly developing field, which provides a potentially unifying perspective across a wide range of domains and levels of explanation. Here, we introduce the historical and conceptual foundations of the approach, explore (...)
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  • Understanding complexity in the human brain.Danielle S. Bassett & Michael S. Gazzaniga - 2011 - Trends in Cognitive Sciences 15 (5):200.
  • Theoretical neuroscience: computational and mathematical modeling of neural systems.Peter Dayan & L. Abbott - 2001 - Philosophical Psychology 15 (4):563-577.
  • Connectionist models of cognition.Michael Sc Thomas & James L. McClelland - 2008 - In Ron Sun (ed.), The Cambridge Handbook of Computational Psychology. Cambridge University Press.
  • More is different.P. W. Anderson - 1994 - In H. Gutfreund & G. Toulouse (eds.), Biology and Computation: A Physicist's Choice. World Scientific. pp. 3--21.
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