Patents by Inventor Fabian Moerchen

Fabian Moerchen has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 7797265
    Abstract: Documents from a data stream are clustered by first generating a feature vector for each document. A set of cluster centroids (e.g., feature vectors of their corresponding clusters) are retrieved from a memory based on the feature vector of the document using a locality sensitive hashing function. The centroids may be retrieved by retrieving a set of cluster identifiers from a cluster table, the cluster identifiers each indicative of a respective cluster centroid, and retrieving the cluster centroids corresponding to the retrieved cluster identifiers from a memory. Documents may then be clustered into one or more of the candidate clusters using distance measures from the feature vector of the document to the cluster centroids.
    Type: Grant
    Filed: February 25, 2008
    Date of Patent: September 14, 2010
    Assignee: Siemens Corporation
    Inventors: Klaus Brinker, Fabian Moerchen, Bernhard Glomann, Claus Neubauer
  • Patent number: 7711668
    Abstract: Documents from a data stream are clustered by first generating a feature vector for each document. A set of cluster centroids (e.g., feature vectors of their corresponding clusters) are retrieved from a memory based on the feature vector of the document and a relative age of each of the cluster centroids. The centroids may be retrieved by retrieving a set of cluster identifiers from a cluster table, the cluster identifiers each indicative of a respective cluster centroid, and retrieving the cluster centroids corresponding to the retrieved cluster identifiers from a memory. A list of cluster identifiers in the cluster table may be maintained based on the relative age of cluster centroids corresponding to the cluster identifiers. Cluster identifiers that correspond to cluster centroids with a relative age exceeding a predetermined threshold are periodically removed from the list of cluster identifiers.
    Type: Grant
    Filed: February 25, 2008
    Date of Patent: May 4, 2010
    Assignee: Siemens Corporation
    Inventors: Klaus Brinker, Fabian Moerchen, Bernhard Glomann, Claus Neubauer
  • Publication number: 20080205775
    Abstract: Documents from a data stream are clustered by first generating a feature vector for each document. A set of cluster centroids (e.g., feature vectors of their corresponding clusters) are retrieved from a memory based on the feature vector of the document and a relative age of each of the cluster centroids. The centroids may be retrieved by retrieving a set of cluster identifiers from a cluster table, the cluster identifiers each indicative of a respective cluster centroid, and retrieving the cluster centroids corresponding to the retrieved cluster identifiers from a memory. A list of cluster identifiers in the cluster table may be maintained based on the relative age of cluster centroids corresponding to the cluster identifiers. Cluster identifiers that correspond to cluster centroids with a relative age exceeding a predetermined threshold are periodically removed from the list of cluster identifiers.
    Type: Application
    Filed: February 25, 2008
    Publication date: August 28, 2008
    Inventors: Klaus Brinker, Fabian Moerchen, Bernhard Glomann, Claus Neubauer
  • Publication number: 20080208847
    Abstract: Documents and/or document clusters are ranked with respect to their geographical locations and/or user specific (e.g., user input) relevance. Highly relevant documents and/or document clusters are assigned higher ranks than less relevant documents and/or clusters. In this way, ranked lists of documents and/or clusters, top clusters (e.g., top stories), top documents (e.g., most important articles), etc. may be served (e.g., presented, delivered, etc.) to users.
    Type: Application
    Filed: February 25, 2008
    Publication date: August 28, 2008
    Inventors: Fabian Moerchen, Klaus Brinker, Claus Neubauer
  • Publication number: 20080205774
    Abstract: Documents from a data stream are clustered by first generating a feature vector for each document. A set of cluster centroids (e.g., feature vectors of their corresponding clusters) are retrieved from a memory based on the feature vector of the document using a locality sensitive hashing function. The centroids may be retrieved by retrieving a set of cluster identifiers from a cluster table, the cluster identifiers each indicative of a respective cluster centroid, and retrieving the cluster centroids corresponding to the retrieved cluster identifiers from a memory. Documents may then be clustered into one or more of the candidate clusters using distance measures from the feature vector of the document to the cluster centroids.
    Type: Application
    Filed: February 25, 2008
    Publication date: August 28, 2008
    Inventors: Klaus Brinker, Fabian Moerchen, Bernhard Glomann, Claus Neubauer
  • Publication number: 20080183665
    Abstract: Documents in a high density data stream are clustered. Incoming documents are analyzed to find metadata, such as words in a documents headline or abstract and people, places, and organizations discussed in the document. The metadata is emphasized as compared to other words found in the document. A single feature vector for each document determined based on the emphasized metadata will accordingly take into account the importance of such words and clustering efficacy and efficiency are improved.
    Type: Application
    Filed: January 15, 2008
    Publication date: July 31, 2008
    Inventors: Klaus Brinker, Fabian Moerchen