A study of pattern recovery in recurrent correlation associative memories
نویسندگان
چکیده
In this paper, we analyze the recurrent correlation associative memory (RCAM) model of Chiueh and Goodman (1990, 1991). This is an associative memory in which stored binary memory patterns are recalled via an iterative update rule. The update of the individual pattern-bits is controlled by an excitation function, which takes as its argument the inner product between the stored memory patterns and the input patterns. Our contribution is to analyze the dynamics of pattern recall when the input patterns are corrupted by noise of a relatively unrestricted class. We show how to identify the excitation function which maximizes the separation (the Fisher discriminant) between the uncorrupted realization of the noisy input pattern and the remaining patterns residing in the memory. The excitation function which gives maximum separation is exponential when the input bit-errors follow a binomial distribution. We develop an expression for the expectation value of bit-error probability on the input pattern after one iteration. We show how to identify the excitation function which minimizes the bit-error probability. The relationship between the excitation functions which result from the two different approaches is examined for a binomial distribution of bit-errors. We develop a semiempirical approach to the modeling of the dynamics of the RCAM.
منابع مشابه
A neural network with a single recurrent unit for associative memories based on linear optimization
Recently, some continuous-time recurrent neural networks have been proposed for associative memories based on optimizing linear or quadratic programming problems. In this paper, a simple and efficient neural network with a single recurrent unit is proposed for realizing associative memories. Compared with the existing neural networks for associative memories, the main advantage of the proposed ...
متن کاملBipolar spectral associative memories
Nonlinear spectral associative memories are proposed as quantized frequency domain formulations of nonlinear, recurrent associative memories in which volatile network attractors are instantiated by attractor waves. In contrast to conventional associative memories, attractors encoded in the frequency domain by convolution may be viewed as volatile online inputs, rather than nonvolatile, off-line...
متن کاملInvariant pattern recognition using analog recurrent associative memories
A novel invariant pattern recognition approach is proposed based on a special gradient-type recurrent analog associative memory. The system exhibits stable equilibrium points in predefined positions specified by feature vectors extracted from the training set, while invariance to geometrical transformations is inferred by using the tangent distance. Experimental results for handwritten characte...
متن کاملBalance Recovery Reactions in Recurrent Non-specific Low Back Pain Patients
Objectives: Altered movement strategy and postural control has been observed in Low Back Pain (LBP) patients. Objective of this study was to determine postural response following support surface translation, also correlations between postural response related measures and disability caused by LBP. Methods: 20 healthy subjects and 20 patients with recurrent non specific LBP participated in th...
متن کاملCHAPTER III Neural Networks as Associative Memory
Associative memories can be implemented either by using feedforward or recurrent neural networks. Such associative neural networks are used to associate one set of vectors with another set of vectors, say input and output patterns. The aim of an associative memory is, to produce the associated output pattern whenever one of the input pattern is applied to the neural network. The input pattern m...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- IEEE transactions on neural networks
دوره 14 3 شماره
صفحات -
تاریخ انتشار 2003