Thank you for contacting PayPal Customer Service.
In an effort to assist you as quickly and efficiently as possible, please direct all customer service inquires through our website. Click on the hyperlink below to go to the PayPal website. After entering your email address and password into the Member Log In box, you can submit your inquiry via our Customer Service Contact form. If you indicate the type of question you have with as much detail as you can, we will be able to provide you with the best customer service possible. If your email program is unable to open hyperlinks, please copy and paste this URL into the address bar of your browser. https://www.paypal.com/wf/f=default If you are contacting PayPal because you are unable to log into your account, please use the contact form below. https://www.paypal.com/ewf/f=default Thank you for choosing PayPal! This email is sent to you by the contracting entity to your User Agreement, either PayPal Inc or PayPal (Europe) Limited. PayPal(Europe) Limited is authorised and regulated by the Financial Services Authority in the UK as an electronic money institution. ------------------------------------------------------------------------ Note: When you click on links in this email, you will be asked to log into your PayPal Account. As always, make sure that you are logging into a secure PayPal page by looking for 'https://www.paypal.com/' at the beginning of the URL. Please do not reply to this e-mail. Mail sent to this address will not be answered. ******************************************** Original Email: ----- Forwarded message from Herbert Jaeger <[EMAIL PROTECTED]> ----- From: Herbert Jaeger <[EMAIL PROTECTED]> Date: Tue, 20 Dec 2005 17:44:01 +0100 To: [email protected] Cc: Herbert Jaeger <[EMAIL PROTECTED]> Subject: Connectionists: CFP Neural Networks Special Issue on ESNs and LSMs User-Agent: Mozilla/5.0 (Windows; U; WinNT4.0; en-US; rv:1.0.1) Gecko/20020823 Netscape/7.0 Content-Type: text/plain; charset=us-ascii; format=flowed Content-Transfer-Encoding: 7bit X-Virus-Scanned: by amavisd-new 20030616p5 at demetrius.iu-bremen.de CALL FOR PAPERS: Neural Networks 2007 Special Issue "Echo State Networks and Liquid State Machines" Guest Co-Editors : Dr. Herbert Jaeger, International University Bremen, h.jaeger at iu-bremen.de Dr. Wolfgang Maass, Technische Universitaet Graz, maass at igi.tugraz.at Dr. Jose C. Principe, University of Florida, principe at cnel.ufl.edu A new approach to analyzing and training recurrent neural network (RNNs) has emerged over the last few years. The central idea is to regard a RNN as a nonlinear, excitable medium, which is driven by input signals or fed-back output signals. From the excited response signals inside the medium, simple (typically linear), trainable readout mechanisms distil the desired output signals. The medium consists of a large, randomly connected network, which is not adapted during learning. It is variously referred to as a dynamical reservoir or liquid. There are currently two main flavours of such networks. Echo state networks were developed from a mathematical and engineering background and are composed of simple sigmoid units, updated in discrete time. Liquid state machines were conceived from a mathematical and computational neuroscience perspective and usually are made of biologically more plausible, spiking neurons with a continuous-time dynamics. These approaches have quickly gained popularity because of their simplicity, expressiveness, ease of training and biological appeal. This Special Issue aims at establishing a first comprehensive overview of this newly emerging area, demonstrating the versatility of the approach, its mathematical foundations and also its limitations. Submissions are solicited that contribute to this area of research with respect to -- mathematical and algorithmic analysis, -- biological and cognitive modelling, -- engineering applications, -- toolboxes and hardware implementations. One of the main questions in current research in this field concerns the structure of the dynamical reservoir / liquid. Submissions are especially welcome which investigate the relationship between the excitable medium topology and algebraic properties and the resulting modeling capacity, or methods for pre-adapting the medium by unsupervised or evolutionary mechanisms, or including special-purpose sub networks (as for instance, feature detectors) into the medium. Submission of Manuscript The manuscripts should be prepared according to the format of the Neural Networks and electronically submitted to one of the Guest Editors. The review will take place within 3 months and only very minor revisions will be accepted. For any further question, please contact the Guest Editors. DEADLINE FOR SUBMISSION : June 1, 2006. ------------------------------------------------------------------ Dr. Herbert Jaeger Professor for Computational Science International University Bremen Campus Ring 12 28759 Bremen, Germany Phone (+49) 421 200 3215 Fax (+49) 421 200 49 3215 email [EMAIL PROTECTED] http://www.faculty.iu-bremen.de/hjaeger/ ------------------------------------------------------------------ ----- End forwarded message ----- -- Eugen* Leitl <a href="http://leitl.org">leitl</a> http://leitl.org ______________________________________________________________ ICBM: 48.07100, 11.36820 http://www.ativel.com 8B29F6BE: 099D 78BA 2FD3 B014 B08A 7779 75B0 2443 8B29 F6BE ------- To unsubscribe, change your address, or temporarily deactivate your subscription, please go to http://v2.listbox.com/member/[EMAIL PROTECTED] [ Attachment 1.2 Type: application/pgp-signature] ------- To unsubscribe, change your address, or temporarily deactivate your subscription, please go to http://v2.listbox.com/member/[EMAIL PROTECTED]
