Patent classifications
H04Q3/0083
Systems and methods for automatically conducting risk assessments for telephony communications
Systems and methods for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
SYSTEMS AND METHODS FOR AUTOMATICALLY CONDUCTING RISK ASSESSMENTS FOR TELEPHONY COMMUNICATIONS
Systems and methods are disclosed for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
Systems and methods for automatically conducting risk assessments for telephony communications
Systems and methods for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
SYSTEMS AND METHODS FOR AUTOMATICALLY CONDUCTING RISK ASSESSMENTS FOR TELEPHONY COMMUNICATIONS
Systems and methods are disclosed for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
Systems and methods for automatically conducting risk assessments for telephony communications
Systems and methods for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
Automatic adaptive network planning
A method for automatic adaptive network planning includes receiving a first list which includes a plurality of potential sites. A set of the network coverage goals and one or more models substantially related to the network coverage are received. A wireless network coverage map is generated for each site based on the received model(s). The coverage map includes a plurality of locations within a corresponding coverage area. For each location and for each site the likelihood of the network coverage goals being realized is calculated using the generated wireless network coverage map. A second list of proposed active sites is automatically generated. The second list includes a subset of the sites included in the first list based on the calculations performed for each location. The second list of the proposed active sites substantially meets the set of network coverage goals.
SYSTEMS AND METHODS FOR AUTOMATICALLY CONDUCTING RISK ASSESSMENTS FOR TELEPHONY COMMUNICATIONS
Systems and methods are disclosed for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
Systems and methods for automatically conducting risk assessments for telephony communications
Systems and methods for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.
AUTOMATIC ADAPTIVE NETWORK PLANNING
A method for automatic adaptive network planning includes receiving a first list which includes a plurality of potential sites. A set of the network coverage goals and one or more models substantially related to the network coverage are received. A wireless network coverage map is generated for each site based on the received model(s). The coverage map includes a plurality of locations within a corresponding coverage area. For each location and for each site the likelihood of the network coverage goals being realized is calculated using the generated wireless network coverage map. A second list of proposed active sites is automatically generated. The second list includes a subset of the sites included in the first list based on the calculations performed for each location. The second list of the proposed active sites substantially meets the set of network coverage goals.
SYSTEMS AND METHODS FOR AUTOMATICALLY CONDUCTING RISK ASSESSMENTS FOR TELEPHONY COMMUNICATIONS
Systems and methods are disclosed for using machine-learning techniques for labeling incoming calls with categories relating to a risk level. A model is generated using call log data. The call log data is augmented using information from additional data sources to generate features for the model. The model may then be used to categorize additional incoming calls. The model may be used in real-time to categorize incoming calls, or categorization results may be stored for a plurality of calling numbers. Various embodiments provide various technical advantages by virtue of how the components of the system are deployed between an endpoint communication device, a telephony provider system, and possibly other systems.