G06F18/24765

METHOD, DEVICE, AND COMPUTER PROGRAM PRODUCT FOR ERROR EVALUATION
20210117779 · 2021-04-22 ·

Embodiments of the present disclosure provide a method, device, and computer program product for error evaluation. A method for error evaluation comprises in accordance with a determination that an error occurs in a data protection system, obtaining context information related to an operation of the data protection system; determining, based on the context information and using a trained deep learning model, a type of the error in the data protection system from a plurality of predetermined types, the deep learning model being trained based on training context information and a label on a ground-truth type of an error associated with the training context information; and providing the determined type of the error in the data protection system. In this way, it is possible to achieve automatic classification of errors in the data protection system, thereby improving the efficiency in error classification and saving the operation costs. Therefore, more rapid and more accurate measures can be taken to handle the errors.

AUTOMATED PROCESS EXECUTION BASED ON EVALUATION OF MACHINE LEARNING MODELS
20210110293 · 2021-04-15 ·

The present disclosure relates to computer-implemented methods, software, and systems for utilizing tools and techniques for identifying process rules for automated execution of instances of a process workflow. One example method includes extracting rules from a machine learning model for prediction of execution results of process workflow instances. Metrics defining coverage and accuracy of the rules are calculated. The rules are evaluated according to the metrics and are reduced to a first set of rules that are provided for further evaluation. A rule from the first set of rules is determined to be incorporated into process rules defined for the process workflow at a process execution engine. The process rules associated with execution of the process workflow are updated to include the first rule and to generate a process result automatically according to the first rule when the instance complies with prerequisites defined at the first rule.

System, method, and computer-accessible medium to verify data compliance by iterative learning

An exemplary system, method, and computer-accessible medium can include, for example, establishing a unique rule-identifier in one-to-one correspondence with at least one set of unknown time-variable rules against which data is to be made compliant, obtaining at least one set of data marked compliant against the one or more set of rules, obtaining meta-data from the compliant data, obtaining at least one set of data marked non-compliant against the set of unknown time-variable rules, extracting meta-data from the non-compliant data, joining the set of compliant and non-compliant metadata to generate a set of estimated rules corresponding to the rule-identifier based at least one of (i) the meta-data of the joined set and (ii) machine learning algorithms.

Optimized imaging consulting process for rare imaging findings
11003948 · 2021-05-11 ·

In this patent, a smart consulting process is established to improve workflow and human classification of images. A key innovative aspect is the process for selecting an optimal consultant for an image. Such a process may improve human image classification, such as diagnostic radiology. Furthermore, such a process may improve education to more novice imagers. A modified workflow is established where users have general and specific consult pools. Additionally, a modified relative value unit (RVU) system is created to appropriately compensate users for the modified workflow, which is established.

AUTOMATED REINFORCEMENT LEARNING BASED CONTENT RECOMMENDATION
20210142118 · 2021-05-13 ·

Embodiments of the present disclosure relate to systems and methods for reinforcement learning based content recommendation. The method includes receiving configuration data for creation of a reinforcement learning model, generating a plurality of correlation matrices, receiving a request for content for providing to a user, determining a user context, the user context characterizing an aggregation of attributes of the user, and selecting a next piece of content from a database of pieces of content. The method can include presenting the selected piece of content to the user, receiving user inputs in response to the presenting of the selected piece of content to the user, and updating the value characterizing the outcome of previous presentation of the selected piece of content based on the received user input.

NOTIFICATION CONTENT MESSAGE VIA ARTIFICIAL INTELLIGENCE VOICE RESPONSE SYSTEM

Aspects of the present invention disclose a method to derive optimal notification content to be delivered to one or plurality of users based on congregating contextual information from interconnected devices. The method includes one or more processors identifying an interaction of a user with a computing device. The method further includes determining a first set of conditions of an operating environment that includes the interaction of the user with the computing device. The method further includes determining a relationship between the first set of conditions of the operating environment and the interaction of the user with the computing device. The method further includes generating a knowledge base that includes the determined relationship, the first set of conditions of the operating environment, and the interaction of the user with the computing device. The method further includes generating a notification message for the user based on the knowledge base.

SYSTEM, METHOD, AND COMPUTER-ACCESSIBLE MEDIUM TO VERIFY DATA COMPLIANCE BY ITERATIVE LEARNING

An exemplary system, method, and computer-accessible medium can include, for example, establishing a unique rule-identifier in one-to-one correspondence with at least one set of unknown time-variable rules against which data is to be made compliant, obtaining at least one set of data marked compliant against the one or more set of rules, obtaining meta-data from the compliant data, obtaining at least one set of data marked non-compliant against the set of unknown time-variable rules, extracting meta-data from the non-compliant data, joining the set of compliant and non-compliant metadata to generate a set of estimated rules corresponding to the rule-identifier based at least one of (i) the meta-data of the joined set and (ii) machine learning algorithms.

FEATURE EXTRACTION METHOD, COMPARISON SYSTEM, AND STORAGE MEDIUM
20210049777 · 2021-02-18 · ·

The feature extraction device according to one aspect of the present disclosure comprises: a reliability determination unit that determines a degree of reliability with respect to a second region, which is a region that has been extracted as a foreground region of an image and is within a first region that has been extracted from the image as a partial region containing a recognition subject, said degree of reliability indicating the likelihood of being the recognition subject; a feature determination unit that, on the basis of the degree of reliability, uses a first feature which is a feature extracted from the first region and a second feature which is a feature extracted from the second region to determine a feature of the recognition subject; and an output unit that outputs information indicating the determined feature of the recognition subject.

Data object creation and recommendation using machine learning based offline evolution

The technology disclosed relates to neural network-based systems and methods of preparing a data object creation and recommendation database. Roughly described, it relates to, for each of a plurality of preliminary data object images, providing a representation of the image in conjunction with a respective conformity parameter indicating level of conformity of the image with a predefined goal, training a neural network system with the preliminary data object image representations in conjunction with their respective conformity parameters, to evaluate future data object image representations for conformity with the predefined goal, selecting a subset of secondary data object image representations, from a provided plurality of secondary data object image representations, in dependence upon the trained neural network system, and storing the image representations from the selected subset of secondary data object image representations in a tangible machine readable memory for use in a data object creation and recommendation system.

SYSTEMS AND METHODS FOR CLEANING DATA

A system may determine first groups of image data from multiple groups, obtain a first identification model based on the first groups of image data, and classify the first groups of image data to generate a first classification result based on the first identification model in which the first groups of image data may be classified into a qualified dataset and an unqualified dataset. The system may obtain an initial second identification model with a second accuracy threshold and perform one or more iterations. In each of one or more iterations, the system may classify the unqualified dataset to generate a second classification result, update the qualified dataset and the unqualified dataset, and update, based on the updated qualified dataset, the second identification model. The system may further determine the cleaned dataset based on the updated qualified dataset.