Synthesis of formal and fuzzy logic to detect patterns in clutter

L. Perlovsky, R. Linnehan, C. Mutz, J. Schindler, B. Weijers, R. Brockett
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引用次数: 4

Abstract

Recognizing patterns in data often relies on rules, or exploits simple features in the data. However, when noise or clutter obscures these features in the data, one must consider a number of different features to determine the best match. This often leads to combinatorial complexity manifested in either of two ways, complexity of learning or complexity of computations. Adaptive model-based approaches potentially offer better computational performance than feature-based methods and may lead to extracting the maximum information from data. These techniques still often relied on using formal logic to compare library models to incoming data. Neural networks are usually not easy for implementing model-based approaches. Fuzzy logic bypasses using formal logic, but it provides solutions that often are heavily influenced by the initial degree of fuzziness. We are developing a technique for detecting patterns below clutter based on the neural network modeling field theory. Modeling field theory (MFT) using fuzzy dynamic logic to overcome combinatorial complexity is introduced along with an algorithm suitable for the detection of patterns below clutter. This new mathematical technique is inspired by the analysis of biological systems, like the human brain, which combines conceptual understanding with emotional evaluation and overcomes the combinatorial complexity of model-based techniques.
综合形式逻辑和模糊逻辑来检测杂乱中的模式
识别数据中的模式通常依赖于规则,或者利用数据中的简单特征。然而,当噪声或杂波掩盖了数据中的这些特征时,必须考虑许多不同的特征来确定最佳匹配。这通常会导致组合复杂性以两种方式表现出来,即学习的复杂性或计算的复杂性。基于自适应模型的方法可能比基于特征的方法提供更好的计算性能,并且可能导致从数据中提取最大的信息。这些技术仍然经常依赖于使用形式化逻辑来比较库模型和传入数据。神经网络通常不容易实现基于模型的方法。模糊逻辑绕过了使用形式逻辑,但它提供的解决方案通常受到初始模糊程度的严重影响。我们正在开发一种基于神经网络建模场理论的杂波下模式检测技术。介绍了利用模糊动态逻辑克服组合复杂性的建模场理论(MFT),并提出了一种适合于杂波下模式检测的算法。这种新的数学技术的灵感来自于对生物系统的分析,比如人类大脑,它将概念理解与情感评估结合起来,克服了基于模型的技术的组合复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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