18168982. SEMANTIC VECTORIZATION FOR FEATURE ENGINEERING simplified abstract (SAP SE)

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SEMANTIC VECTORIZATION FOR FEATURE ENGINEERING

Organization Name

SAP SE

Inventor(s)

Mohamed Bouadi of La Garenne-Colombes (FR)

Arta Alavi of Andresy (FR)

Salima Benbernou of Colombes (FR)

Mourad Ouziri of Gennevilliers (FR)

SEMANTIC VECTORIZATION FOR FEATURE ENGINEERING - A simplified explanation of the abstract

This abstract first appeared for US patent application 18168982 titled 'SEMANTIC VECTORIZATION FOR FEATURE ENGINEERING

Simplified Explanation: The patent application describes a method for determining features, creating feature vectors based on a logical entity taxonomy, combining these vectors into a composite vector, determining an operator based on the composite vector, and deriving a new feature using the operator.

Key Features and Innovation:

  • Determination of features based on a taxonomy of logical entities
  • Creation of feature vectors for each feature
  • Combination of feature vectors into a composite vector
  • Determination of an operator based on the composite vector
  • Derivation of a new feature using the operator

Potential Applications: This technology could be applied in various fields such as data analysis, machine learning, and pattern recognition.

Problems Solved: This technology helps in efficiently analyzing and processing data by deriving new features based on existing ones.

Benefits:

  • Improved data analysis capabilities
  • Enhanced pattern recognition
  • Efficient feature derivation process

Commercial Applications: Potential commercial applications include data mining software, predictive analytics tools, and automated decision-making systems.

Questions about the Technology: 1. How does this technology improve data analysis processes? 2. What are the potential implications of using this technology in machine learning algorithms?

Frequently Updated Research: Stay updated on advancements in feature extraction methods and data analysis techniques to enhance the efficiency of this technology.


Original Abstract Submitted

Systems and methods include determination of a plurality of features, determination, for each of the plurality of features, of a feature vector based on a taxonomy of logical entities, combination of the determined feature vectors into a composite feature vector, determination of an operator based on the composite feature vector, and determination of a new feature based on the operator.