Patent classifications
G06N5/022
DISEASE PREDICTION METHOD, APPARATUS, AND COMPUTER PROGRAM
A disease prediction method, apparatus, and computer program are provided. A disease prediction method according to several embodiments of the present disclosure can comprise the steps of: constructing a disease prediction model by learning learning data including ribosome data and disease information for learning, acquiring test ribosome data of an examinee; and predicting disease information about the examinee form the test ribosome data by using the disease prediction model. The disease prediction model can accurately predict disease information about the examinee by detecting and learning the characteristics of ribosome data, which vary according to disease information.
SYSTEM AND METHOD FOR DETERMINING AND PRESENTING CLINICAL ANSWERS
A method includes causing at least a portion of a knowledge graph representing ontological health related information to be presented on a display of a client device. The method further includes receiving, at an artificial intelligence engine, a medical query, wherein the medical query includes a plurality of strings of characters. The method further includes identifying, in the plurality of strings of characters, indicia comprising a phrase, a predicate, a keyword, a subject, an object, a cardinal, a number, a concept, or some combination thereof. The method further includes comparing the indicia to the knowledge graph to generate an answer responsive to the medical query. The method further includes causing the answer to be presented at the client device.
LEARNING DATA GENERATION DEVICE, METHOD, AND RECORD MEDIUM FOR STORING PROGRAM
A learning data generation device includes processing circuitry to extract a cause expression and a result expression from an input text, and to generate a modified text by at least one of a method of interchanging the cause expression and the result expression and a method of specifying one of the cause expression and the result expression as a modification target sentence and replacing the modification target sentence with a replacement candidate sentence dissimilar to the modification target sentence.
STORAGE MEDIUM, EXPLANATORY INFORMATION OUTPUT METHOD, AND INFORMATION PROCESSING DEVICE
A non-transitory computer-readable storage medium storing an explanatory information output program for causing a computer to execute processing includes obtaining a contribution of each of a plurality of factors to an output result of a machine learning model in a case of inputting each of a plurality of pieces of data, each of the plurality of factors being included in each of the plurality of pieces of data; clustering the plurality of pieces of data based on the contribution of each of the plurality of factors to generate a plurality of groups of factors; and outputting explanatory information that includes a diagram representing magnitude of the contribution of each of the plurality of factors to the output result in a case of inputting data included in the group for each of the plurality of groups.
Graph Based Discovery on Deep Learning Embeddings
A computer implemented method includes obtaining deep learning model embedding for each instance present in a dataset, the embedding incorporating a measure of concept similarity. An identifier of a first instance of the dataset is received. A similarity distance is determined based on the respective embeddings of the first instance and a second instance. Similarity distances between embeddings, represented as points, imply a graph, where each instance's embedding is connected by an edge to a set of similar instances' embeddings. Sequences of connected points, referred to as walks, provide valuable information about the dataset and the deep learning model.
Performance of Complex Optimization Tasks with Improved Efficiency Via Neural Meta-Optimization of Experts
Example systems perform complex optimization tasks with improved efficiency via neural meta-optimization of experts. In particular, provided is a machine learning framework in which a meta-optimization neural network can learn to fuse a collection of experts to provide a predicted solution. Specifically, the meta-optimization neural network can learn to predict the output of a complex optimization process which optimizes over outputs from the collection of experts to produce an optimized output. In such fashion, the meta-optimization neural network can, after training, be used in place of the complex optimization process to produce a synthesized solution from the experts, leading to orders of magnitude faster and computationally more efficient prediction or problem solution.
AUTOMATIC PREDICTION OF VISITATIONS TO SPECIFIED POINTS OF INTEREST
Techniques are described herein for predicting popularity metrics and/or visitation metrics that are used in the selection of a point of interest (POI) for placement of an electric vehicle charging station (EVCS). The techniques involve training a machine learning model based on information obtained about POIs at which EVCSs are already installed. The information used to train the machine learning model includes, for each existing installation location: (a) visitation data that describes visitation features, and (b) popularity metrics and/or visitation metrics that have been generated for the location. When the machine learning model has been trained, the trained machine learning model predicts popularity metrics and/or visitation metrics for a POI location at which no EVCS has been installed based on the visitation data of that POI.
METHOD OF MAPPING PATIENT-HEALTHCARE ENCOUNTERS AND TRAINING MACHINE LEARNING MODELS
A predictive patient health machine learning model is trained based on baseline health data configured as directed graphs. Patient-healthcare system encounter data formed at least in part by electronic medical records (EMRs) is gathered. The patient-healthcare system encounter data is configured as directed graphs to generate graphed health data and the predictive patient health machine learning model is trained on that graphed health data.
WORKFLOW INSTRUCTION INTERPRETATION FOR WEB TASK AUTOMATION
A method of executing a sequence of tasks includes receiving a natural language input indicative of the sequence of tasks. The natural language input may include a first task and a plurality of possible next tasks for the first task. The tasks may each be associated with a playback performance skeleton, indicative of a series of actions to be carried out on a web page. The series of action may have been generated, ahead of time, from a recorded performance of a similar task. The first task may be arranged to be performed. Then, based on a result of the performance of the first task, a successive task from among a plurality of possible next tasks associated with the result of performance of the first task may be selected. The successive task may then be arranged to be performed.
IMAGE PROCESSING UTILIZING AN ENTIGEN CONSTRUCT
A method performed by a computing device includes determining a set of identigens for each word of a query of a topic to produce sets of identigens. Each set of identigens represents one or more different meanings of a word of the query. The method further includes interpreting, using identigen pairing rules, the sets of identigens to determine a most likely meaning interpretation of the query and produce an excluding query entigen group with an excluding entigen. The method further includes recovering a response entigen group for the query from a knowledge database utilizing the excluding query entigen group. The response entigen group provides a response to the query.