NIPS 2016

Centre Convencions Internacional Barcelona, Barcelona SPAIN
Monday December 05 - Saturday December 10, 2016

http://nips.cc/Conferences/2016

Call for Papers

Deadline for Paper Submissions:
Fri May 20, 2016 16:00 PM UTC
Fri May 20, 2016 09:00 AM pacific daylight time

Submit at: https://cmt.research.microsoft.com/NIPS2016/

Submissions are solicited for the Thirtieth Annual Conference on Neural 
Information Processing Systems, an interdisciplinary conference that brings 
together researchers in all aspects of neural and statistical information 
processing and computation, and their applications.

Submission instructions:

https://nips.cc/Conferences/2016/PaperInformation/AuthorSubmissionInstructions

Note that the submission deadline is earlier than last year, it is already on 
May 20. All submissions will be made in PDF format. Papers are limited to eight 
pages, including figures and tables, in the NIPS style. An additional ninth 
page containing only cited references is allowed. Final papers will be due in 
advance of the conference. However, minor changes such as typos and additional 
references will still be allowed for a certain period after the conference. 

Supplementary Material: Authors can submit up to 10 MB of material, containing 
proofs, audio, images, video, data or source code. Looking at any supplementary 
material is up to the discretion of the reviewers.

Reviewing: Reviewing will be double-blind: the reviewers will not know the 
identities of the authors. It will be up to the authors to ensure the proper 
anonymization of their paper. Prior submissions on arXiv.org are permitted. The 
reviewers will be asked not to actively look for such submissions, but if they 
are aware of them, this will not constitute a conflict of interest. The 
anonymous reviews and meta-reviews of accepted papers will be made public after 
the end of the review process.

Reviewing by authors: To better distribute the reviewing load and to make the 
reviewing process more transparent, we request that for each submission at 
least one of the authors volunteers as a reviewer. The authors can choose 
during the online submission process who among them takes on that duty. More 
details on this procedure will be posted on the NIPS 2016 webpage.

Evaluation Criteria: Submissions which are not within the scope of NIPS (see 
Technical Areas) or are already published elsewhere (see Dual Submission 
Policy) may be rejected by the Area Chairs without further review. Submission 
which have a fatal flaw(s) revealed by the reviewers, which may include 
(without limitation) wrong proofs or flawed or insufficient wet-lab, hardware 
or software experiments, may be rejected on that basis, without taking into 
consideration other criteria. Submissions passing the previous steps will be 
judged on the basis of technical quality, novelty, potential impact, and 
clarity.

Typical NIPS papers often but not always consist of a mix of algorithmic, 
theoretical and experimental results, in varying proportions. However, while 
theoretically grounded arguments are certainly welcome, it is counterproductive 
to add "decorative maths" whose only purpose is to make the paper look more 
substantial or even intimidating, without adding relevant insights. Algorithmic 
contributions should have at least an illustration of how the algorithm can 
eventually materialize into a machine learning application.

Technical Areas: Papers are solicited in all areas of neural information 
processing and statistical learning, including, but not limited to:

Neuroscience, cognitive science, and brain imaging: Theoretical and 
experimental studies of processing and transmission of information in 
biological neurons and networks, including spike train generation, synaptic 
modulation, plasticity and adaptation. Neuroimaging, cognitive neuroscience, 
connectomics, brain mapping, brain segmentation, brain computer interfaces, 
theoretical, computational, or experimental studies of perception, 
psychophysics, human or animal learning, memory, reasoning, problem solving,  
and neuropsychology.
Algorithms and Architectures: Statistical learning algorithms, kernel methods, 
graphical models, Gaussian processes, Bayesian methods, neural networks, deep 
learning, dimensionality reduction and manifold learning, hyper-parameter and 
model selection, combinatorial optimization, relational and structured 
learning, Markov decision processes, reinforcement Learning, dynamical systems, 
recurrent networks.
Learning Theory: Models of learning and generalization, regularization and 
model selection, large deviations and asymptotic analysis, Bayesian learning, 
spaces of functions and kernels, statistical physics of learning, online 
learning and competitive analysis, computational complexity, hardness of 
learning and approximations, statistical theory, control theory, information 
theory.
Applications: Innovative applications that use machine learning, including 
systems for time series prediction, bioinformatics, systems biology, text/web 
analysis, multimedia processing, robotics, natural language processing, 
decision and control, exploration, planning, navigation, game playing, 
multi-agent coordination, speech, image, and signal processing, coding, 
synthesis, denoising, segmentation, source separation, auditory perception, 
psychoacoustics, other aspects of computer vision, object detection and 
recognition, motion detection and tracking, visual psychophysics, visual scene 
analysis and interpretation.
Data, competitions, implementations and software tools: Datasets or data 
repositories, benchmarks, competitions or challenges and software toolkits.


Dual Submissions Policy: Submissions that are identical (or substantially 
similar) to versions that have been previously published, or accepted for 
publication, or that have been submitted in parallel to other conferences are 
not appropriate for NIPS and violate our dual submission policy. Exceptions to 
this rule are the following:

Previously published papers by the authors on related topics must be cited 
(with adequate means of preserving anonymity). 
It is acceptable to submit to NIPS 2016 work that has been made available as a 
technical report (or similar, e.g. in arXiv) without citing it. 
The dual-submission rules apply during the whole NIPS review period until the 
authors have been notified about the decision on their paper. 
Demonstrations, Workshops, and Symposia: There is a separate Demonstration 
track at NIPS. Authors wishing to submit to the Demonstration track should 
consult the upcoming Call for Demonstrations. There is also a separate Call for 
Workshops & Symposia.

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