Patents Assigned to SymphonyAI Sensa LLC
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Patent number: 11990229Abstract: An example system includes a memory, processor, and instructions to receive a set of multidimensional adjudicated claims data, receive metric and lens functions, perform the metric and lens functions on a set of dimensions of the claims data to map claims to a reference space, generate cover of overlapping sets of the reference space, cluster the mapped claims in the reference space using the cover to identify nodes and edges, identify groups of nodes in a graph based on known improperly denied, for each group, identify differentiating drivers, and generate a denials application user interface depicting different cards for each of at least a subset of the identified groups in the graph that includes the known improperly denied claims, each card indicating a set of primary statistics of the claims in the nodes of that group, for each card depicting the differentiating drivers of that group.Type: GrantFiled: March 1, 2018Date of Patent: May 21, 2024Assignee: SymphonyAI Sensa LLCInventors: Allison Gilmore, Tzu-Wei Powers, Alan Lehman, Cindy Zhang
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Patent number: 11868856Abstract: A method comprises receiving a network of a plurality of nodes and a plurality of edges, each of the nodes of the plurality of nodes comprising members representative of at least one subset of initial data points, selecting a subset of the data points based on each node of the plurality of nodes, for each selected data point of the set of selected data points, determining a predetermined number of other data points that are closest in distance to that particular selected data point, grouping the selected data points into a plurality of groups based, at least in part, on the predetermined number of other data points of the set of selected data points that are closest in distance, each group of the plurality of groups including a different subset of data points, and providing a list of selected data points and the plurality of groups.Type: GrantFiled: February 4, 2022Date of Patent: January 9, 2024Assignee: SymphonyAI Sensa LLCInventors: Ajithkumar Warrier, Jennifer Kloke, Ryan Hsu, Sudhakar Jonnalagadda
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Patent number: 11868851Abstract: A method comprises receiving a network of a plurality of nodes and a plurality of edges, each of the nodes comprising members representative of at least one subset of training data points, each of the edges connecting nodes that share at least one data point, grouping the data points into a plurality of groups, each data point being a member of at least one group, creating a first transformation data set, the first transformation data set including the training data set as well as a plurality of feature subsets associated with at least one group, values of a particular data point for a particular feature subset for a particular group being based on values of the particular data point if the particular data point is a member of the particular group, and applying a machine learning model to the first transformation data set to generate a prediction model.Type: GrantFiled: March 11, 2016Date of Patent: January 9, 2024Assignee: SymphonyAI Sensa LLCInventor: Gunnar Carlsson
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Patent number: 11868376Abstract: Exemplary systems and methods for visualization of data analysis are provided. In various embodiments, a method comprises accessing a database, analyzing the database to identify clusters of data, generating an interactive visualization comprising a plurality of nodes and a plurality of edges wherein a first node of the plurality of nodes represents a cluster and an edge of the plurality of edges represents an intersection of nodes of the plurality of nodes, selecting and dragging the first node in response to a user action, and reorienting the interactive visualization in response to the user action of selecting and dragging the first node.Type: GrantFiled: February 25, 2022Date of Patent: January 9, 2024Assignee: SymphonyAI Sensa LLCInventors: Gunnar Carlsson, Harlan Sexton, Gurjeet Singh
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Patent number: 11860941Abstract: An example method includes determining a point from a data set closest to a particular data point using a particular metric and scoring a particular data point based on whether the closest point shares a similar characteristic, selecting a subset of metrics based on the metric score to generate a subset of metrics, evaluating a metric-lens combination by calculating a metric-lens score based on entropy of shared characteristics across subspaces of a reference map generated by the metric-lens combination, selecting a metric-lens combination based on the metric-lens score, generating topological representations using the received data set, associating each node with at least one shared characteristic based on member data points of that particular node sharing the shared characteristic, scoring groups within each topological representation based on entropy, scoring topological representation based on the group scores, and providing a visualization of at least one topological representation based on the graph scoType: GrantFiled: March 29, 2022Date of Patent: January 2, 2024Assignee: SymphonyAI Sensa LLCInventors: Jennifer Kloke, Harlan Sexton