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A Study of Pattern Recovery in Recurrent Correlation Associative Memories
Oleh:
Wilson, R. C.
;
Hancock, E. R.
Jenis:
Article from Journal - ilmiah internasional
Dalam koleksi:
IEEE Transactions on Neural Networks vol. 14 no. 3 (May 2003)
,
page 506-519.
Topik:
screen memories
;
pattern recovery
;
correlation
;
associative memories
Ketersediaan
Perpustakaan Pusat (Semanggi)
Nomor Panggil:
II36.7
Non-tandon:
1 (dapat dipinjam: 0)
Tandon:
tidak ada
Lihat Detail Induk
Isi artikel
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.
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