Patents Assigned to CrowdSmart, Inc.
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Patent number: 12079581Abstract: Provided are processes of balancing between exploration and optimization with knowledge discovery processes applied to unstructured data with tight interrogation budgets. A process may include determining a relevance probability distribution of responses and scores as an explanatory diagnostic. A distribution curve may be determined based on a probabilistic graphical network and a result may be audited relative to the distribution curve to determine noise measurements. The distribution curve may be determined based on a distribution of posterior predictions of entities to score ranking entity bias and noisiness of ranking entity feedback.Type: GrantFiled: August 3, 2022Date of Patent: September 3, 2024Assignee: CrowdSmart, Inc.Inventors: Thomas Kehler, Markus Guehrs, Sonali Sinha
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Patent number: 11586826Abstract: Provided are processes of balancing between exploration and optimization with knowledge discovery processes applied to unstructured data with tight interrogation budgets. Natural language texts may be processed, such as into respective vectors, by a natural language processing model. An output vector of (or intermediate vector within) an example NLP model may include over 500 dimensions, and in many cases 700-800 dimensions. A process may manage and measure semantic coverage by defining geometric characteristics, such as size or a relative distance matrix, of a sematic space corresponding to an evaluation during which the natural language texts are obtained based on the vectors of the natural language texts. A system executing the process may generate a visualization of the semantic space, which may be reduced to or is a latent embedding space, by reducing the dimensionality of vectors while preserving their relative distances between the high and reduced dimensionality forms.Type: GrantFiled: October 1, 2021Date of Patent: February 21, 2023Assignee: CrowdSmart, Inc.Inventor: Thomas Kehler
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Patent number: 11507753Abstract: Provided are processes of balancing between exploration and optimization with knowledge discovery processes applied to unstructured data with tight interrogation budgets. A process may determine an alignment score of each entity participating in an evaluation of a feature in a knowledge discovery process based on feedback received from the respective entities for the feature. Feedback of an entity that is mapped in the PGN may be processed to determine an alignment score of the entity for the feature, e.g., based on how the entity scored a feature. A plurality of different distributions indicative of alignment scores may be processed for display to visually indicate to a user the alignment of participating entities in their evaluations of the features.Type: GrantFiled: October 1, 2021Date of Patent: November 22, 2022Assignee: CrowdSmart, Inc.Inventors: Thomas Kehler, Markus Guehrs, Sonali Sinha
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Patent number: 11455474Abstract: Provided are processes of balancing between exploration and optimization with knowledge discovery processes applied to unstructured data with tight interrogation budgets. A process may include determining a relevance probability distribution of responses and scores as an explanatory diagnostic. A distribution curve may be determined based on a probabilistic graphical network and a result may be audited relative to the distribution curve to determine noise measurements. The distribution curve may be determined based on a distribution of posterior predictions of entities to score ranking entity bias and noisiness of ranking entity feedback.Type: GrantFiled: October 1, 2021Date of Patent: September 27, 2022Assignee: CrowdSmart, Inc.Inventors: Thomas Kehler, Markus Guehrs, Sonali Sinha
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Patent number: 11366972Abstract: Provided are processes of balancing between exploration and optimization with knowledge discovery processes applied to unstructured data with tight interrogation budgets. In an evaluation for which features are structured (e.g., either in a structured evaluation or determined from unstructured data and provided for evaluation) a probabilistic graphical network may graph inputs of machine learning model(s) and outputs of the machine learning model(s) as graphical elements, where one or more edges or nodes, or values associated therewith, may be based on the outputs. For example, as a set of ranking entities engage an expert system during an evaluation, the expert system may determine and update a probabilistic graphical network that represents a state of the evaluation (e.g., at a point in time after one or more ranking events), or (e.g., after completion) a final state and determined scores based the inputs provided by the ranking entities.Type: GrantFiled: October 1, 2021Date of Patent: June 21, 2022Assignee: CrowdSmart, Inc.Inventors: Thomas Kehler, Markus Guehrs, Sonali Sinha