Patents Assigned to QUANTUM INTELLIGENCE, INC.
  • Publication number: 20110295783
    Abstract: The present invention discloses various embodiments of multiple domain anomaly detection systems and methods. In one embodiment of the invention, a multiple domain anomaly detection system uses a generic learning procedure per domain to create a “normal data profile” for each domain based on observation of data per domain, wherein the normal data profile for each domain can be used to determine and compute domain-specific anomaly data per domain. Then, domain-specific anomaly data per domain can be analyzed together in a cross-domain fusion data analysis using one or more fusion rules. The fusion rules may involve comparison of domain-specific anomaly data from multiple domains to derive a multiple-domain anomaly score meter for a particular cross-domain analysis task. The multiple domain anomaly detection system and its related method may also utilize domain-specific anomaly indicators of each domain to derive a cross-domain anomaly indicator using the fusion rules.
    Type: Application
    Filed: August 7, 2011
    Publication date: December 1, 2011
    Applicant: QUANTUM INTELLIGENCE, INC.
    Inventors: Ying ZHAO, Charles C. ZHOU, Chetan KOTAK
  • Publication number: 20110213788
    Abstract: The present invention is a method for detecting anomalies against normal profiles and for fusing and visualizing the results from multiple anomaly detection systems in a quantifying and unifying user interface. The knowledge patterns discovered from historical data serve as the normal profiles, or baselines or references (hereinafter, called “normal profiles”). The method assesses a piece of information against a collection of the normal profiles and decides how anomalous it is. The normal profiles are calculated from historical data sources, and stored in a collection of mining models. Multiple anomaly detection systems generate a collection of mining models using multiple data sources. When a piece of information is newly observed, the method measures the degree of correlation between the observed information and the normal profiles.
    Type: Application
    Filed: May 9, 2011
    Publication date: September 1, 2011
    Applicant: QUANTUM INTELLIGENCE, INC.
    Inventors: YING ZHAO, Charles Chuxin Zhou, Chetan K. Kotak
  • Publication number: 20080215576
    Abstract: The present invention is a method for detecting anomalies against normal profiles and for fusing and visualizing the results from multiple anomaly detection systems in a quantifying and unifying user interface. The knowledge patterns discovered from historical data serve as the normal profiles, or baselines or references (hereinafter, called “normal profiles”). The method assesses a piece of information against a collection of the normal profiles and decides how anomalous it is. The normal profiles are calculated from historical data sources, and stored in a collection of mining models. Multiple anomaly detection systems generate a collection of mining models using multiple data sources. When a piece of information is newly observed, the method measures the degree of correlation between the observed information and the normal profiles.
    Type: Application
    Filed: March 5, 2008
    Publication date: September 4, 2008
    Applicant: QUANTUM INTELLIGENCE, INC.
    Inventors: Ying Zhao, Charles Chuxin Zhou, Chetan K. Kotak
  • Publication number: 20080090736
    Abstract: This invention is to use knowledge pattern learning and search system for selecting microorganisms to produce useful materials and to generate clean energy from wastes, wastewaters, biomass or from other inexpensive sources. The method starts with an in silico screening platform which involves multiple steps. First, the organisms' profiles are compiled by linking the massive genetic and chemical fingerprints in the metabolic and energy-generating biological pathways (e.g. codon usages, gene distributions in function categories, etc.) to the organisms' biological behaviors. Second, a machine learning and pattern recognition system is used to group the organism population into characteristic groups based on the profiles. Lastly, one or a group of microorganisms are selected based on profile match scores calculated from a defined metabolic efficiency measure, which, in term, is a prediction of a desired capability in real life based on an organism's profile.
    Type: Application
    Filed: December 3, 2007
    Publication date: April 17, 2008
    Applicant: QUANTUM INTELLIGENCE, INC.
    Inventors: YING ZHAO, Charles Zhou, Hsiu-Ying Sherry
  • Publication number: 20080086436
    Abstract: A method searches for new, unique and interesting information using knowledge patterns discovered through data mining and text mining, machine learning (including supervised or unsupervised) and pattern recognition methods. The method is implemented as a computer program acting as an agent installed in a computer node or multiple nodes in a networked environment. The system is useful for improving search experience and used in knowledge discovery applications when new, unique and interesting information is critical. The system is also useful for introducing new concepts and products for business applications.
    Type: Application
    Filed: October 19, 2007
    Publication date: April 10, 2008
    Applicants: QUANTUM INTELLIGENCE, INC.
    Inventors: YING ZHAO, Charles Chuxin Zhou