Neural networks: New tools for modelling and data analysis in science

被引:0
作者
Clark, JW [1 ]
机构
[1] Washington Univ, McDonnell Ctr Space Sci, St Louis, MO 63130 USA
来源
SCIENTIFIC APPLICATIONS OF NEURAL NETS | 1999年 / 522卷
关键词
D O I
暂无
中图分类号
O59 [应用物理学];
学科分类号
摘要
To provide a primer for the study of scientific applications of connectionist systems, the dynamical, statistical, and computational properties of the most prominent artificial neural-network models are reviewed. The basic ingredients of neural modeling are introduced, including architecture, neuronal response, dynamical equations, coding schemes, and learning rules. Perceptron systems and recurrent attractor networks are highlighted. Applications of recurrent nets as content-addressable memories and for the solution of combinatorial optimization problems are described. The backpropagation algorithm for supervised training of multilayer perceptrons is developed, and the utility of these systems in classification and function approximation tasks is discussed. Some instructive scientific applications in astronomy, physical chemistry, nuclear physics, protein structure, and experimental high-energy physics are examined in detail. A special effort is made to illuminate the nature of neural-network models as automated devices that learn the statistics of their data environment and perform statistical inference at a level that may approach the Bayesian ideal. The review closes with a critical assessment of the strengths and weaknesses of neural networks as aids to modeling and data analysis in science.
引用
收藏
页码:1 / 96
页数:96
相关论文
共 278 条
[51]  
BRUCK J, 1988, NEURAL INFORMATION P
[52]   PREDICTION OF HUMAN MESSENGER-RNA DONOR AND ACCEPTOR SITES FROM THE DNA-SEQUENCE [J].
BRUNAK, S ;
ENGELBRECHT, J ;
KNUDSEN, S .
JOURNAL OF MOLECULAR BIOLOGY, 1991, 220 (01) :49-65
[53]   NEURAL NETWORK DETECTS ERRORS IN THE ASSIGNMENT OF MESSENGER-RNA SPLICE SITES [J].
BRUNAK, S ;
ENGELBRECHT, J ;
KNUDSEN, S .
NUCLEIC ACIDS RESEARCH, 1990, 18 (16) :4797-4801
[54]   CLEANING UP GENE DATABASES [J].
BRUNAK, S ;
ENGELBRECHT, J ;
KNUDSEN, S .
NATURE, 1990, 343 (6254) :123-123
[55]   SPIN-GLASSES AND THE STATISTICAL-MECHANICS OF PROTEIN FOLDING [J].
BRYNGELSON, JD ;
WOLYNES, PG .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 1987, 84 (21) :7524-7528
[56]  
Bryngelson JD, 1990, TETRAHEDRON COMPUT M, V3, P129
[57]  
Buntine W. L., 1991, Complex Systems, V5, P603
[58]   OUTLINE OF A THEORY OF THOUGHT-PROCESSES AND THINKING MACHINES [J].
CAIANIELLO, ER .
JOURNAL OF THEORETICAL BIOLOGY, 1961, 1 (02) :204-&
[59]  
Cherkassky V., 1994, From Statistics to Neural Networks
[60]   EMPIRICAL PREDICTIONS OF PROTEIN CONFORMATION [J].
CHOU, PY ;
FASMAN, GD .
ANNUAL REVIEW OF BIOCHEMISTRY, 1978, 47 :251-276