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US Patent 11647034 Service access data enrichment for cybersecurity

Patent 11647034 was granted and assigned to Microsoft on May, 2023 by the United States Patent and Trademark Office.

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Patent
Patent
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Patent attributes

Patent Applicant
Microsoft
Microsoft
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Current Assignee
Microsoft
Microsoft
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
116470340
Date of Patent
May 9, 2023
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Patent Application Number
170192190
Date Filed
September 12, 2020
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Patent Citations
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US Patent 10382461 System for determining anomalies associated with a request
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US Patent 11349857 Suspicious group detection
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Patent Citations Received
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US Patent 12126695 Enhancing security of a cloud deployment based on learnings from other cloud deployments
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US Patent 12095879 Identifying encountered and unencountered conditions in software applications
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US Patent 12120140 Detecting threats against computing resources based on user behavior changes
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US Patent 12126643 Leveraging generative artificial intelligence (‘AI’) for securing a monitored deployment
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US Patent 11861563 Business email compromise detection system
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US Patent 11973784 Natural language interface for an anomaly detection framework
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US Patent 11991198 User-specific data-driven network security
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US Patent 12021888 Cloud infrastructure entitlement management by a data platform
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Patent Primary Examiner
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Sakinah White Taylor
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Enriched access data supports anomaly detection to enhance network cybersecurity. Network access data is enriched using service nodes representing resource provision and other services, with geolocation nodes representing grouped access origins, and access values representing access legitimacy confidence. Data enrichment provides a trained model by mapping IP addresses to geolocations, building a bipartite access graph whose inter-node links indicate aspects of accesses from geolocations to services, and generating semantic vectors from the graph. Vector generation may include collaborative filtering, autoencoding, neural net embedding, and other machine learning tools and techniques. Anomaly detection systems then calculate service-geolocation or geolocation-geolocation vector distances with anomaly candidate vectors and the model's graph-based vectors, and treat distances past a threshold as anomaly indicators. Some embodiments curtail false positives relative to simply checking network access logs or packets for activity coming from unexpected places. Some avoid or reduce model retraining.

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