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Knowledge-Based Intelligent Information and Engineering Systems

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TLDR
Adaptive Resonance Theory (ART) neural networks model real-time prediction, search, learning, and recognition, and design principles derived from scientific analyses and design constraints imposed by targeted applications have jointly guided the development of many variants of the basic networks.
Abstract
Adaptive Resonance Theory (ART) neural networks model real-time prediction, search, learning, and recognition. ART networks function both as models of human cognitive information processing [1,2,3] and as neural systems for technology transfer [4]. A neural computation central to both the scientific and the technological analyses is the ART matching rule [5], which models the interaction between topdown expectation and bottom-up input, thereby creating a focus of attention which, in turn, determines the nature of coded memories. Sites of early and ongoing transfer of ART-based technologies include industrial venues such as the Boeing Corporation [6] and government venues such as MIT Lincoln Laboratory [7]. A recent report on industrial uses of neural networks [8] states: “[The] Boeing ... Neural Information Retrieval System is probably still the largest-scale manufacturing application of neural networks. It uses [ART] to cluster binary templates of aeroplane parts in a complex hierarchical network that covers over 100,000 items, grouped into thousands of self-organised clusters. Claimed savings in manufacturing costs are in millions of dollars per annum.” At Lincoln Lab, a team led by Waxman developed an image mining system which incorporates several models of vision and recognition developed in the Boston University Department of Cognitive and Neural Systems (BU/CNS). Over the years a dozen CNS graduates (Aguilar, Baloch, Baxter, Bomberger, Cunningham, Fay, Gove, Ivey, Mehanian, Ross, Rubin, Streilein) have contributed to this effort, which is now located at Alphatech, Inc. Customers for BU/CNS neural network technologies have attributed their selection of ART over alternative systems to the model's defining design principles. In listing the advantages of its THOT technology, for example, American Heuristics Corporation (AHC) cites several characteristic computational capabilities of this family of neural models, including fast on-line (one-pass) learning, “vigilant” detection of novel patterns, retention of rare patterns, improvement with experience, “weights [which] are understandable in real world terms,” and scalability (www.heuristics.com). Design principles derived from scientific analyses and design constraints imposed by targeted applications have jointly guided the development of many variants of the basic networks, including fuzzy ARTMAP [9], ART-EMAP [10], ARTMAP-IC [11],

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Inverse Continuous Casting Problem Solved by Applying the Artificial Bee Colony Algorithm

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Constructing personal knowledge base: automatic key-phrase extraction from multiple-domain web pages

TL;DR: A general framework that could automatically extract key-phrases from a collection of web pages concerning a specific topic with the help of The Free Dictionary and then construct a personal knowledge base is proposed.
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Effective Backbone Techniques for Ontology Integration

TL;DR: This chapter presents an enriched ontology model for a formal ontological analysis that enables to build ontologies with a clean and untangled taxonomic structure and proposes identity-based similarity, which enables to avoid comparisons of all properties related to each concept, while matching between concepts.
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A Classification Method of Medical Database by Immune Multi-agent Neural Networks with Planar Lattice Architecture

TL;DR: The Planar Lattice Neural Network is applied to find an optimal number while classifying a set of training cases to report the experimental results for hepatobiliary disorders medical databases.
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Diversity analysis on boosting nominal concepts

TL;DR: The experimental results suggest that the performance of AdaBoost depend on the nominal classifier diversity that can be used as a stopping criteria in ensemble learning.
References
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Journal ArticleDOI

Fuzzy ARTMAP: A neural network architecture for incremental supervised learning of analog multidimensional maps

TL;DR: The fuzzy ARTMAP system is compared with Salzberg's NGE systems and with Simpson's FMMC system, and its performance in relation to benchmark backpropagation and generic algorithm systems.
Book ChapterDOI

Discovering Frequent Closed Itemsets for Association Rules

TL;DR: This paper proposes a new algorithm, called A-Close, using a closure mechanism to find frequent closed itemsets, and shows that this approach is very valuable for dense and/or correlated data that represent an important part of existing databases.
Journal ArticleDOI

ARTMAP: Supervised real-time learning and classification of nonstationary data by a self-organizing neural network

TL;DR: A new neural network architecture, called ARTMAP, that autonomously learns to classify arbitrarily many, arbitrarily ordered vectors into recognition categories based on predictive success, which is a type of self-organizing expert system that calibrates the selectivity of its hypotheses based upon predictive success.
Proceedings Article

Mining association rules with item constraints

TL;DR: In this paper, the problem of integrating constraints that are Boolean expressions over the presence or absence of items into the association discovery algorithm was considered and three integrated algorithms for mining association rules with item constraints were presented.