20240054211. DETECTING ANOMALOUS DATA simplified abstract (International Business Machines Corporation)

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DETECTING ANOMALOUS DATA

Organization Name

International Business Machines Corporation

Inventor(s)

Jing Xu of Xi'an (CN)

Xue Ying Zhang of Xi'an (CN)

Si Er Han of Xi'an (CN)

Jing James Xu of Xi'an (CN)

Xiao Ming Ma of Xi'an (CN)

Wen Pei Yu of Xi'an (CN)

DETECTING ANOMALOUS DATA - A simplified explanation of the abstract

This abstract first appeared for US patent application 20240054211 titled 'DETECTING ANOMALOUS DATA

Simplified Explanation

The patent application describes a method for detecting anomalous data by using multiple models on a dataset and evaluating the results to determine a combined score threshold for defining anomalies.

  • Detecting anomalous data by applying multiple models to a dataset
  • Evaluating the detection results for each model
  • Determining a combined score for the detection results
  • Setting a combined score threshold for defining anomalies
  • Defining a set of detected anomalies based on the combined score and threshold

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      1. Potential Applications
  • Fraud detection in financial transactions
  • Intrusion detection in cybersecurity
  • Quality control in manufacturing processes
      1. Problems Solved
  • Identifying anomalies in large datasets
  • Improving accuracy in anomaly detection
  • Streamlining the detection process by using multiple models
      1. Benefits
  • Enhanced detection of anomalous data
  • Increased efficiency in identifying anomalies
  • Improved overall data security and quality control


Original Abstract Submitted

detecting anomalous data by applying a plurality of models to a data set to yield detection results including anomalous data, applying evaluation methods to the detection results for each of the plurality of models, determining a combined score for the detection results according to the evaluation methods, determining a combined score threshold, and defining a set of detected anomalies according to the combined score and the combined score threshold.