Call for Papers :: NIPS 2011 Workshop on Interpretable Decoding of Higher 
Cognitive States from Neural Data
Interpretable Decoding of Higher Cognitive States from Neural Data

NIPS 2011 Workshop, Dec 16 or 17, 2011, Granada, Spain

Overview

Over recent years, machine learning methods have become a crucial analytical 
tool in cognitive neuroscience (see reviews by Formisano et al., 2008; Pereira 
et al., 2009). Decoding techniques have dramatically increased the sensitivity 
of experiments, and so also the subtlety of cognitive questions that can be 
asked. At the same time the mental phenomena being studied are moving beyond 
lower-level perceptual and motor processes which are directly grounded in 
external measurable realities.

Decoding higher cognition and interpreting the learned behaviour of the 
classifiers used pose unique challenges, as these psychological states are 
complex, fast-changing and often ill-defined. Contemporary machine learning 
methods deal well with the small numbers of cases, and high numbers of 
co-linear dimensions typical of neural data, and are generally optimized to 
maximize classification performance, rather than to enable meaningful 
interpretation of the features they learn from. And indeed recent work has 
succeeded to decode psychological phenomena including visual object recognition 
(e.g. Kriegeskorte et al., 2008; Connolly et al., 2011), perceptual 
interpretation of sounds (Staeren et al., 2009),  lexical semantics (Mitchell 
et al., 2008; Simanova et al., 2010; Devereux et al., 2010; Murphy et al., 
2011), decision making during game playing (Xiang et al., 2009) and the process 
of mental arithmetic (Anderson et al., 2008). But for the cognitive scientists 
who use these methods, the primary question is often not "how much" but rather 
"how" and "why" the patterns of neural activity identified by a machine 
learning algorithm encode particular cognitive processes.

The aim of this workshop is therefore to 1) discuss the achievements and 
problems of the decoding of high-level cognitive states, and 2) explore the use 
of machine learning methodologies and other computational models that enable 
such cognitive interpretation of neural recordings of different modalities. 
Advances in this field require close collaboration between machine learning 
experts, neuroscientists and cognitive scientists. Thus, this workshop is 
highly interdisciplinary and will aim to attract submissions also from outside 
the existing NIPS community. By stimulating discussions among experts in the 
different fields, the workshop seeks to generate novel insights and new 
directions for research.

Topics of interest

The field requires techniques that are capable of taking advantage of spatially 
distributed patterns in the brain, that are separated in space but coordinated 
in their activity. Methods should also be sensitive to the fine-grained 
temporal patterns of multiple processes - which may proceed in a serial 
fashion, overlapping or in parallel with each-other, or in multiple passes with 
bidirectional information flows. Different recording modalities have 
distinctive advantages: fMRI provides very fine millimetre-level localisation 
in the brain but poor temporal resolution, while EEG and MEG have millisecond 
temporal resolution at the cost of spatial resolution. Ideally machine learning 
methods would be able to meaningfully combine complementary information from 
these different neuroimaging techniques (see e.g. De Martino et al., 2010). 
Moreover, as the processes underlying higher cognition are so complex, methods 
should be able to disentangle even tightly linked and confounded subprocesses. 
Finally, general use algorithms that could induce latent dimensions from neural 
data, and so reveal the "hidden" psychological states, would be a dramatic 
advance on current hypothesis-driven analytical paradigms. Originality of 
approach is encouraged and submissions on any related methodological approach 
are welcomed, such as:

- Interpreting spatial and temporal location of selected features and their 
weights
- Discovering "hidden" or "latent" cognitive representations
- Disentangling confounded processes and representations
- Comparing or combining data from recording modalities (e.g. fMRI, EEG, 
structural MRI, DTI, MEG, NIRS, EcOG, single cell recordings)
- Fuzzy and partial classifications
- Unaligned or incommensurate feature spaces and data representation

As noted above, the complexity of higher cognition poses challenges. To take 
language comprehension as an example, speech is received at 3-4 words; 
acoustic, semantic and syntactic processing can occur in parallel; and the form 
of underlying representations (sentence structures, conceptual descriptions) 
remains controversial. We welcome submissions dealing with any high-level 
cognitive functions that exhibit similar complexity, for instance:

- Knowledge representation and concepts
- Language and communication
- Understanding visual and auditory experience
- Memory and learning
- Reasoning and problem solving
- Decision making and executive control

Submissions

Authors are invited to submit full papers on original, unpublished work in the 
topic area of this workshop via the NIPS 2011 submission site at 
https://cmt.research.microsoft.com/NIPS2011/Default.aspx. Submissions should be 
formatted using the NIPS 2011 stylefiles, with blind review and not exceeding 8 
pages plus an extra page for references. Author and submission information can 
be found at http://nips.cc/PaperInformation/AuthorSubmissionInstructions. The 
stylefiles are available at http://nips.cc/PaperInformation/StyleFiles. Each 
submission will be reviewed at least by two members of the programme committee. 
Accepted papers will be published in the workshop proceedings. Dual submissions 
to the main NIPS 2011 conference and this workshop are allowed; if you submit 
to the main session, indicate this when you submit to the workshop. If your 
paper is accepted for the main session, you should withdraw your paper from the 
workshop upon notification by the main session.

Important Dates

- Aug 30, 2011: Call for papers
- Sep 23, 2011: Deadline for submission of workshop papers
- Oct 15, 2011: Notification of acceptance
- Oct 31, 2011: Camera-ready papers due
- Dec 16 or 17, 2011: Workshop date

Organisers

The organizing committee are researchers who are all directly involved in 
machine learning of higher cognitive states, and have previous experience 
running similarly themed interdisciplinary workshops, including the NAACL 
Workshop on Computational Neurolinguistics (2010),  ICCS Symposium on Neural 
Decoding of Higher Cognitive States (2010), the CAOS Special Session on 
Computational Approaches to the Neuroscience of Concepts (2010).

- Kai-min Kevin Chang, Language Technologies Institute & Centre for Cognitive 
Brain Imaging, Carnegie Mellon University
- Anna Korhonen, Computer Laboratory & Research Centre for English and Applied 
Linguistics, University of Cambridge
- Brian Murphy, Computation, Language and Interaction Group, Centre for 
Mind/Brain Sciences, University of Trento
- Irina Simanova, Max Planck Institute for Psycholinguistics & Donders 
Institute for Brain, Cognition and Behaviour, Nijmegen

Invited speakers

- Elia Formisano, Universiteit Maastricht, Netherlands
- Francisco Pereira, Princeton University, USA (provisional)

Programme committee

The preliminary programme comittee listing is given below, and includes leading 
researchers in a range of fields covering machine learning, neuroscience and 
wider cognitive sciences:

- John Anderson, Carnegie Mellon University, USA
- Yi Chen, Max-Planck Institute for Human Cognitive and Brain Sciences Leipzig, 
Germany
- Mark Cohen, University of California Los Angeles, USA
- Kevyn Collins-Thompson, Microsoft Research, USA
- Andy Connolly, Dartmouth College, USA
- Jack Gallant, University of California Berkeley, USA
- Marcel van Gerven, Radboud University Nijmegen, Netherlands
- Michael Hanke, Dartmouth College, USA
- Jim Haxby, Dartmouth College, USA & University of Trento, Italy
- Tom Heskes, Radboud University Nijmegen, Netherlands
- Mark Johnson, Macquarie University, Australia
- Marius Peelen, University of Trento, Italy
- Francisco Pereira, Princeton University, USA
- Russ Poldrack, University of Texas Austin, USA
- Dean Pomerleau, Intel Labs Pittsburgh, USA
- Diego Sona, Fondazione Bruno Kessler, Italy

References

- Anderson, J. R., Carter, C. S., Fincham, J. M., Qin,. Y., Ravizza, S. M., and 
Rosenberg-Lee, M. (2008). Using fMRI to Test Models of Complex Cognition. 
Cognitive Science, 32, 1323-1348.
- Connolly, A. C., Guntupalli, J. S., Gors, J., Hanke, M., Halchenko, Y. O., 
Wu, Y., Abdi, H. and Haxby, J. V. (Submitted). Representation of biological 
classes in the human brain.
- De Martino F., Valente G., de Borst A. W., Esposito F., Roebroeck A., Goebel 
R., Formisano E. (2010). Multimodal imaging: an evaluation of univariate and 
multivariate
methods for simultaneous EEG/fMRI. Magn Reson Imaging. 28(8), 1104-12.
- Devereux, B., Kelly, C., and Korhonen, A. (2010). Using fMRI Activation to 
Conceptual Stimuli to Evaluate Methods for Extracting Conceptual 
Representations from Corpora. Proceedings of the NAACL-HLT Workshop on 
Computational Neurolinguistics.
- Formisano E., De Martino F., Valente G. (2008). Multivariate analysis of fMRI 
time series: classification and regression of brain responses using machine 
learning. Magn Reson Imaging, 26(7), 921-34.
- Kriegeskorte, N., Mur, M., Ruff, D., Kiani, R., Bodurka, J., Esteky, H., 
Tanaka, K., and Bandettini, P. (2008). Matching categorical object 
representations in inferior temporal cortex of man and monkey. Neuron, 60(6), 
1126-1141.
- Mitchell, T. M., Shinkareva, S. V., Carlson, A., Chang, K. M., Malave, V. L., 
Mason, R. A., and Just, M. A. (2008). Predicting Human Brain Activity 
Associated with the Meanings of Nouns. Science, 320, 1191-1195.
- Murphy, B., Poesio, M., Bovolo, F., Bruzzone, L., Dalponte, M., and Lakany, 
H. (2011). EEG decoding of semantic category reveals distributed 
representations for single concepts. Brain and Language, 117, 12-22.
- Pereira F., Mitchell T., Botvinick M. (2009). Machine learning classifiers 
and fMRI: a tutorial overview. Neuroimage. 45(1 Suppl) S199-209.
- Simanova, I., Van Gerven, M., Oostenveld, R., and Hagoort, P. (2010). 
Identifying object categories from event-related EEG: Toward decoding of 
conceptual representations. Plos One, 512, E14465.
- Staeren N., Renvall H., De Martino F., Goebel R., Formisano E. (2009). Sound 
categories are represented as distributed patterns in the human auditory 
cortex. Curr Biol, 19(6), 498-502.
- Xiang, J. and Chen, J. and Zhou, H. and Qin, Y. and Li, K. and Zhong, N. 
2009: Using SVM to predict high-level cognition from fMRI data: a case study of 
4* 4 Sudoku solving. Brain Informatics, 171-181.

Links

- NIPS 2011 website: http://nips.cc/Conferences/2011/
- Workshop website: https://sites.google.com/site/decodehighcogstate
- Call for Papers: https://sites.google.com/site/decodehighcogstate/cfp/
(Please feel free to distribute the CFP to all the interested persons and 
groups.)
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