Abstract: A network security system detects anomalous network device behavior associated with a network device in a group of similar network devices based on baseline network device behavior determined for the group. A graphical visualization may be generated to analyze the groups.
Type:
Application
Filed:
August 10, 2015
Publication date:
February 16, 2017
Inventors:
Constantine BOYADJIEV, Joshua Patterson, Paul J. Mahler, Michael E. Wendt
Abstract: A network security system detects anomalous network device behavior associated with a network device in a group of similar network devices based on baseline network device behavior determined for the group. A graphical visualization may be generated to analyze the groups.
Type:
Grant
Filed:
August 10, 2015
Date of Patent:
September 5, 2017
Assignee:
ACCENTURE GLOBAL SERVICES LIMITED
Inventors:
Constantine Boyadjiev, Joshua Patterson, Paul J. Mahler, Michael E. Wendt
Abstract: A machine learning multi-dimensional acoustic feature vector authentication system, according to an example of the present disclosure, builds and trains multiple multi-dimensional acoustic feature vector machine learning classifiers to determine a probability of spoofing of a voice. The system may extract an acoustic feature from a voice sample of a user. The system may convert the acoustic feature into multi-dimensional acoustic feature vectors and apply the multi-dimensional acoustic feature vectors to the multi-dimensional acoustic feature vector machine learning classifiers to detect spoofing and determine whether to authenticate a user.
Abstract: According to an embodiment, a natural language processing artificial intelligence network and data security system determines an emotions model for one or more users from electronic natural language interactions of the users. The system includes a natural language processing decoder to determine textual features from the electronic natural language interactions that may be indicative of emotional states of the users. They system includes an emotions model encoder that generates an emotions model based on the emotional states of the users in the electronic natural language interactions retrieved from the data storage. The system also includes an artificial intelligence network and data security subsystem.
Abstract: According to an embodiment, a natural language processing artificial intelligence network and data security system determines an emotions model for one or more users from electronic natural language interactions of the users. The system includes a natural language processing decoder to determine textual features from the electronic natural language interactions that may be indicative of emotional states of the users. They system includes an emotions model encoder that generates an emotions model based on the emotional states of the users in the electronic natural language interactions retrieved from the data storage. The system also includes an artificial intelligence network and data security subsystem.
Type:
Grant
Filed:
October 5, 2017
Date of Patent:
December 24, 2019
Assignees:
ACCENTURE GLOBAL SOLUTIONS LIMITED, MISRAM LLC
Abstract: A machine learning multi-dimensional acoustic feature vector authentication system, according to an example of the present disclosure, builds and trains multiple multi-dimensional acoustic feature vector machine learning classifiers to determine a probability of spoofing of a voice. The system may extract an acoustic feature from a voice sample of a user. The system may convert the acoustic feature into multi-dimensional acoustic feature vectors and apply the multi-dimensional acoustic feature vectors to the multi-dimensional acoustic feature vector machine learning classifiers to detect spoofing and determine whether to authenticate a user.
Type:
Grant
Filed:
July 26, 2018
Date of Patent:
March 17, 2020
Assignees:
ACCENTURE GLOBAL SOLUTIONS LIMITED, MISRAM LLC
Inventors:
Constantine T. Boyadjiev, Rajarathnam Chandramouli, Koduvayur Subbalakshmi, Zongru Shao