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This course serves as an introduction to the interdisciplinary field of Cognitive Science for graduate students considering research and careers in the field. Cognitive Science is concerned with understanding the nature of cognition in humans, animals, and machines. Cognition refers to the mental processes that compose our mind: thought, reasoning, decision making, language, learning, and perception. The style of work in cognitive science is interdisciplinary, drawing upon ideas from psychology, philosophy, artificial intelligence, neuroscience, linguistics, and education. A guiding theme of work in cognitive science is the the idea that the mind can be understood as a computational system, sometimes referred to as the computational metaphor of the mind.
The course will be organized into three major sections: (1) computational methods, including cognitive architectures, production systems, neural networks, deep networks, Bayesian networks, and machine learning tools (support-vector machines, nonlinear regression, decision trees, etc.); (2) empirical methods, including experimental design, behavioral experimentation (with reaction time, errors, and choices as the dependent measures), electrophysiological studies involving EEG and event-related potentials, and neuroimaging with fMRI and PET; (3) interdisciplinary readings from the current literature.
The course is open to all graduate students with some background in at least one of the allied disciplines of Cognitive Science.
Students are expected to attend all lectures and participate in class discussions. We will assign small projects at the end of the computational methods and empirical methods sections of the course. During the readings portion of the course, students will be expected to write regular commentaries on articles in preparation for class discussions. Course grade will be roughly based on the two projects (30%), commentaries (50%), and class participation (20%). Class participation may include optional presentation of material in the latter portion of the class.
Over the course of the semester, we'll ask you to write a total of TEN commentaries on assigned or optional readings. The commentary consists of no more than one page of comments, questions, or critiques. The commentary must be submitted online to our google group, and can include one or more of the following:
These commentaries are intended to promote careful thought about a paper. For most of the commentaries, you may pick articles in our readings that interest you most. The articles must be research results, and not tutorial articles (e.g., about fMRI methods). You should hand the commentary in within one week of the class in which the article or related material was discussed. You will be sharing your commentary with the class, and since not everyone will read every article, your commentary may serve as a summary for other students. It should thus be written in an accessible manner. For several assigned readings, we may require that all students write a commentary, and we may require that the commentary be done by the class in which we discuss the article. This procedure will allow us to have class discussions in which everyone is well informed in advance of the class session.
The commentaries should be mailed to the class Google Group, IssuesMethods2013@googlegroups.com. In the subject line, please use “YOUR=LAST-NAME commentary on PAPER-AUTHOR-NAMES”. Feel free to respond to others' commentaries in your own, or in separate emails. You should have an invitation to join the group.
| Topics | Presenter | Readings | Lecture Notes | |
|---|---|---|---|---|
| INTRODUCTION | ||||
| Jan 15 | What is cognitive science? | Mozer, Wager | ||
| Jan 17 | Research introduction: Cognitive neuroscience of pain | Wager | ||
| Jan 22 | Research introduction: Optimizing student learning | Mozer | lecture | |
| FOUNDATIONS: EMPIRICAL METHODS | ||||
| Jan 24 | Experimental design and analysis Outcomes in psychology (errors/RTs/choice/physio) | Wager | Choice reversal Telling More Than You Can Know | Outcomes.pptx |
| Jan 29 | Experimental design and analysis Kinds of designs | Wager | Design.pptx | |
| Jan 31 | Experimental design and analysis Analysis: Linear models | Wager | wager_psyc6200_glm.pptx | |
| Feb 5 | Electrophysiology ECoG, ERP and MEG | Wager | wager_eeg_ecog_meg.pptx | |
| Feb 7 | ERPs and language | Mozer (Wager away), Leif Oines | Kim & Osterhaut (2005) Jentzsch & Sommer (2002) | language slides working memory slides | choice slides |
| Feb 12 | fMRI Part 1 | Wager | wager_fmri_part1.pptx | |
| Feb 14 | fMRI Part 2 | Wager | wager_fmri_part2.pptx | |
| Feb 19 | Neuroanatomy | Wager | wager_psyc6200_neuroanatomy_p1.pptx wager_psyc6200_neuroanatomy_p2.pptx wager_psyc6200_neuroanatomy_p3.pptx | |
| FOUNDATIONS: COMPUTATIONAL METHODS | ||||
| Feb 21 | History of cognitive models, cognitive architectures, production systems | Mozer | Anderson et al. (2008) | Computational Modeling Cognitive Architectures and Production Systems |
| Feb 26 | Neural networks I | Mozer | Neural Networks | |
| Feb 28 | Neural networks II | Mozer | Hinton Family Trees | |
| Mar 5 | Neural networks III | Mozer | ||
| Mar 7 | Reinforcement learning | Mozer | RL Introduction (background reading -- not for commentary) | Reinforcement Learning I Reinforcement Learning II |
| Mar 12 | Bayesian models I | Mozer (Wager away) | Bayesian models | |
| Mar 14 | Bayesian models II | Mozer (Wager away) | ||
| CURRENT DIRECTIONS | ||||
| Mar 19 | Models of language learning | Mozer (Wager away) | <Elman> | |
| Mar 21 | TBA | Mozer (Wager away) | ||
| Apr 2 | TBA | Wager (Mozer away) | ||
| Apr 4 | Brain decoding I | Mozer + Wager | <Mitchell> <Gallant> | |
| Apr 9 | Brain decoding II | Mozer + Wager | ||
| Apr 11 | Social network analysis | Mozer + Wager | <Clauset> | |
| Apr 16 | Semantics | Mozer + Wager | <Griffiths> <Wordnet> <Topic Model> <Kello> | |
| Apr 18 | TBA | Mozer + Wager | ||
| Apr 23 | TBA | Mozer + Wager | ||
| Apr 25 | TBA | (Wager away) | ||
| Apr 30 | TBA | Mozer + Wager | ||
| May 2 | Conscious vs. unconscious processes | Mozer + Wager | ||