Patents Assigned to Aro, Inc.
  • Patent number: 9886683
    Abstract: A user interface for an electronic calendar represents different locations or different users or different user calendars in different portions of the display. Calendar entries can be associated with one or more locations, one or more users, and with one or more user calendars. The different locations may reside in different time zones and a timeline for each time zone is displayed. The position of the calendar entry provides a visual identifier of the timeline with which the event is associated. Travel time to and from events in the calendar are calculated for calendared events and shown adjacent to the beginning and end of the event. A user's future location at a point in time is inferred from patterns in the user's locations and by analyzing the user's calendared events and correspondence in order to calculate travel time to calendared events.
    Type: Grant
    Filed: November 24, 2009
    Date of Patent: February 6, 2018
    Assignee: ARO, Inc.
    Inventors: Jonathan D. Lazarus, Ned Dykstra Hayes, Michael Perkowitz, Kevin Francis Eustice
  • Patent number: 9760756
    Abstract: When a mobile device is known to be at a venue, readings from one or more sensors of the device are used to generate a sensor fingerprint of the venue and/or a venue category corresponding to the venue. The sensor fingerprint indicates typical sensor readings for the one or more physical sensors for devices that are located at the venue and/or venues of the same category. Sensor fingerprints can also be generated for other circumstances associated with the mobile device, such as the activity being undertaken by the corresponding user and a type of event currently occurring at the venue. Fingerprints can also be generated for combinations of circumstances, such as a particular activity at a certain category of venue. When location data cannot distinguish at which venue a mobile device is located, sensor fingerprints are compared to sensor readings received from the device to resolve this ambiguity.
    Type: Grant
    Filed: December 3, 2014
    Date of Patent: September 12, 2017
    Assignee: ARO, Inc.
    Inventors: Kevin Francis Eustice, Michael Perkowitz
  • Patent number: 9541652
    Abstract: A mobile device includes a plurality of sensors, each with one or more costs associated with it. In order to reduce the cost associated with using the sensors to infer information about the device's current context, a sensor manager first collects readings from relatively low-cost sensors, and attempts to infer the device's context based on these readings. If the context cannot be unambiguously determined (within an acceptable degree of tolerance) using the low-cost sensor readings, the sensor manager activates one or more higher-cost sensors to identify the current context. In some instances, if the higher-cost sensor is still not adequate to determine the context, one or more even higher-cost sensors are activated. The weighting of the various costs associated with the sensors can be adjusted based on previous and/or predicted contexts.
    Type: Grant
    Filed: December 3, 2014
    Date of Patent: January 10, 2017
    Assignee: ARO, Inc.
    Inventors: Brian DeWeese, Erin Mounts, Ian G. Clifton, Oliver Crandall Johnson, Kevin Francis Eustice, Michael Perkowitz
  • Patent number: 9183535
    Abstract: A social network model, based on data relevant to a user, is used for semantic processing to enable improved entity recognition among text accessed by the user. An entity extraction module of the server, with reference to a general training corpus, general gazetteers, user-specific gazetteers, and entity models, parses text to identify entities. The entities may be, for example, people, organizations, or locations. A social network module of the server builds the social network model implicit in the data accessed by the user. The social network model includes the relationships between entities and an indication of the strength of each relationship. The social network module is also used to disambiguate names and unify entities based on the social network model.
    Type: Grant
    Filed: July 30, 2009
    Date of Patent: November 10, 2015
    Assignee: ARO, Inc.
    Inventors: Kevin Francis Eustice, Nolan Lawson, Meliha Yetisgen-Yildiz, Kenji Kawai, Michael Perkowitz, Patrick James Ferrel, Jonathan D. Lazarus
  • Patent number: 9179250
    Abstract: A user's context history is analyzed to identify transitions between contexts therein. The identified transitions are used to build a routine model for the user. The routine model includes transition rules indicating a source context, a destination context, and, optionally, a probability that the user will transition from the source context to the destination context, based on the user's historical behavior. A customized recommendation agent for the user is built using the routine model. The customized recommendation agent selects recommendations from a corpus to present to the user, based on the routine model and the user's current or predicted future context.
    Type: Grant
    Filed: July 24, 2013
    Date of Patent: November 3, 2015
    Assignee: ARO, Inc.
    Inventors: Kevin Francis Eustice, Michael Perkowitz
  • Patent number: 9069862
    Abstract: A user query including one or more references to objects of various types and/or text keywords is received from a user and processed into sub-queries. Information sources execute the sub-queries and returns search results matching text keywords and/or relating to objects referenced in the user queries. The search results are organized based on their object types and relationships, and displayed in a manner exposing their relationships to the user.
    Type: Grant
    Filed: October 14, 2010
    Date of Patent: June 30, 2015
    Assignee: ARO, Inc.
    Inventors: Michael Perkowitz, Andrew Francis Hickl, Kevin F. Eustice, Michael Zimmerman
  • Patent number: 9020864
    Abstract: A user's context history is analyzed to build a personality model describing the user's personality and interests. The personality model includes a plurality of metrics indicating the user's position on a plurality of personality dimensions, such as desire for novelty, tendency for extravagance, willingness to travel, love of the outdoors, preference for physical activity, and desire for solitude. A customized recommendation agent is then built based on the personality model, which selects a recommendation from a corpus to present to the user based on an affinity between the user's personality and the selected recommendation.
    Type: Grant
    Filed: July 24, 2013
    Date of Patent: April 28, 2015
    Assignee: ARO, Inc.
    Inventors: Michael Perkowitz, Kevin Francis Eustice, Andrew F. Hickl
  • Patent number: 8892480
    Abstract: A user's context history is used to help select contextual information to provide to the user. Context data describing the user's current context is received and a plurality of information items corresponding to the user's current context are identified from a contextual information corpus. A personalized user behavior model for the user is applied to determine the likelihood that each of the identified information items will be of value to the user. One or more of the information items are selected based on the corresponding likelihoods and the selected information items are provided for presentation to the user.
    Type: Grant
    Filed: July 24, 2013
    Date of Patent: November 18, 2014
    Assignee: ARO, Inc.
    Inventors: Kevin Francis Eustice, Alan Linchuan Liu, Michael Perkowitz, Andrew F. Hickl, Paul G. Allen
  • Patent number: 8838436
    Abstract: Embodiments create and label context slices from observation data that together define a storyline of a user's movements. A context is a (possibly partial) specification of what a user was doing in the dimensions of time, place, and activity. Contexts can vary in their specificity, their semantic content, and their likelihood. A storyline is composed of a time-ordered sequence of contexts that partition a given span of time. A storyline is created through a process of data collection, slicing and labeling. Raw context data can be collected from a variety of observation sources with various error characteristics. Slicing refines the chaotic collection of contexts produced by data collection into a single consistent storyline composed of a sequence of contexts representing homogeneous time intervals. Labeling adds more specific and semantically meaningful data (e.g., geography, venue, activity) to the storyline produced by slicing.
    Type: Grant
    Filed: July 24, 2013
    Date of Patent: September 16, 2014
    Assignee: Aro, Inc.
    Inventors: Alan Linchuan Liu, Kevin Francis Eustice, Andrew F. Hickl
  • Publication number: 20140032572
    Abstract: A user's context history is analyzed to identify transitions between contexts therein. The identified transitions are used to build a routine model for the user. The routine model includes transition rules indicating a source context, a destination context, and, optionally, a probability that the user will transition from the source context to the destination context, based on the user's historical behavior. A customized recommendation agent for the user is built using the routine model. The customized recommendation agent selects recommendations from a corpus to present to the user, based on the routine model and the user's current or predicted future context.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Kevin Francis Eustice, Michael Perkowitz
  • Publication number: 20140032208
    Abstract: Embodiments create and label context slices from observation data that together define a storyline of a user's movements. A context is a (possibly partial) specification of what a user was doing in the dimensions of time, place, and activity. Contexts can vary in their specificity, their semantic content, and their likelihood. A storyline is composed of a time-ordered sequence of contexts that partition a given span of time. A storyline is created through a process of data collection, slicing and labeling. Raw context data can be collected from a variety of observation sources with various error characteristics. Slicing refines the chaotic collection of contexts produced by data collection into a single consistent storyline composed of a sequence of contexts representing homogeneous time intervals. Labeling adds more specific and semantically meaningful data (e.g., geography, venue, activity) to the storyline produced by slicing.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Alan Linchuan Liu, Kevin Francis Eustice, Andrew F. Hickl
  • Publication number: 20140032452
    Abstract: A user's context history is analyzed to build a personality model describing the user's personality and interests. The personality model includes a plurality of metrics indicating the user's position on a plurality of personality dimensions, such as desire for novelty, tendency for extravagance, willingness to travel, love of the outdoors, preference for physical activity, and desire for solitude. A customized recommendation agent is then built based on the personality model, which selects a recommendation from a corpus to present to the user based on an affinity between the user's personality and the selected recommendation.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Michael Perkowitz, Kevin Francis Eustice, Andrew F. Hickl
  • Publication number: 20140031060
    Abstract: Embodiments create and label context slices from observation data that together define a storyline of a user's movements. A context is a (possibly partial) specification of what a user was doing in the dimensions of time, place, and activity. Contexts can vary in their specificity, their semantic content, and their likelihood. A storyline is composed of a time-ordered sequence of contexts that partition a given span of time. A storyline is created through a process of data collection, slicing and labeling. Raw context data can be collected from a variety of observation sources with various error characteristics. Slicing refines the chaotic collection of contexts produced by data collection into a single consistent storyline composed of a sequence of contexts representing homogeneous time intervals. Labeling adds more specific and semantically meaningful data (e.g., geography, venue, activity) to the storyline produced by slicing.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Jeremy Bensley, Kevin Francis Eustice, Alan Linchuan Liu
  • Publication number: 20140032453
    Abstract: A user's context history is used to help select contextual information to provide to the user. Context data describing the user's current context is received and a plurality of information items corresponding to the user's current context are identified from a contextual information corpus. A personalized user behavior model for the user is applied to determine the likelihood that each of the identified information items will be of value to the user. One or more of the information items are selected based on the corresponding likelihoods and the selected information items are provided for presentation to the user.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Kevin Francis Eustice, Alan Linchuan Liu, Michael Perkowitz, Andrew F. Hickl, Paul G. Allen
  • Publication number: 20140032358
    Abstract: A customized recommendation agent for the user is built using a behavioral model. The customized recommendation agent selects recommendations from a corpus to present to the user, based on the behavioral model and the user's current or predicted future context. The customized recommendation agent can be shared by the user with others, thus allowing others to access recommendations that may appeal to the user, for example, for use in planning joint activities. Because the user's recommendation agent is independent from the user's actual history, preferences can be shared without revealing a user's specific behavior.
    Type: Application
    Filed: July 24, 2013
    Publication date: January 30, 2014
    Applicant: ARO, Inc.
    Inventors: Michael Perkowitz, Kevin Francis Eustice, Andrew F. Hickl
  • Patent number: 8429099
    Abstract: An entity recognition model is trained to use gazetteers to recognize entities referenced in documents. When a document associated with a user is received for recognizing entities referenced therein, a gazetteer is selected based on user contexts associated with the user. The document is analyzed using the gazetteer according to the entity recognition model to recognize an entity referenced therein. Additional facts associated with the recognized entities and actions applicable to the recognized entities are provided to enable the user to perform the applicable actions against the recognized entity.
    Type: Grant
    Filed: October 14, 2010
    Date of Patent: April 23, 2013
    Assignee: ARO, Inc.
    Inventors: Michael Perkowitz, Kevin Francis Eustice, Steven M. Reed, Jonathan D. Lazarus, Kenneth Dwight Krossa
  • Patent number: 4308748
    Abstract: An apparatus is disclosed for achieving interference-free fluid velocity distributions in the plane of the walls of a subsonic wind tunnel. Adjustable slats having longitudinal baffles therebetween make up the test section walls, excluding the ground plane, and extend upstream and downstream of the vehicle to be tested. Static pressure measurements along the centerline of each slat provide information that enables calculation of the slat contour required to achieve close matching of the streamlines within the tunnel to those occurring on the road.
    Type: Grant
    Filed: November 30, 1979
    Date of Patent: January 5, 1982
    Assignee: Aro, Inc.
    Inventor: James L. Jacocks