NeuroXL Classifier
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 Informtion
Title: NeuroXL Classifier
Developer: Franz AG
Platform: Windows 95/98/ME/NT/2000/XP
Price: $40
Size: 3,379 KB
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NeuroXL Classifier is a fast, powerful and easy-to-use neural network software tool for classifying data in Microsoft Excel. Designed to aid experts in real-world data mining and pattern recognition tasks, it hides the underlying complexity of neural network processes while providing graphs and statistics for the user to easily understand results. NeuroXL Classifier uses only proven algorithms and techniques, and integrates seamlessly with Microsoft Excel.


NeuroXL Classifier Main Features:
  • Easy to learn and use
  • No prior knowledge of neural networks required
  • Integrates seamlessly with Microsoft Excel
  • Provides proven neural network technology for highly accurate classification
  • Detects relationships and trends in data that traditional methods overlook
  • Lowest cost neural network classification product on the market
  • Compatible with all Microsoft Excel-based trading software
  • NeuroXL Classifier's ability to handle numerous, often-interrelated variables makes it widely applicable to classifying market data. For example, a trader may wish to classify stocks as buy, hold, or sell based on historical data.
  • Neural networks are a proven, widely used technology to solve complex classification problems.
  • Loosely modeled after the human brain, neural networks are interconnected networks of independent processors that, by changing their connections (known as training), learn the solution to a problem.
  • NeuroXL Classifier software implements self-organizing neural networks, which perform categorization by learning the trends and relationships within your data.