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Analysis

1.20160329044Semi-supervised learning of word embeddings
US 10.11.2016
Int.Class G06F 17/27
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
17Digital computing or data processing equipment or methods, specially adapted for specific functions
20Handling natural language data
27Automatic analysis, e.g. parsing, orthograph correction
Appl.No 14707720 Applicant International Business Machines Corporation Inventor Liangliang Cao

Software that trains an artificial neural network for generating vector representations for natural language text, by performing the following steps: (i) receiving, by one or more processors, a set of natural language text; (ii) generating, by one or more processors, a set of first metadata for the set of natural language text, where the first metadata is generated using supervised learning method(s); (iii) generating, by one or more processors, a set of second metadata for the set of natural language text, where the second metadata is generated using unsupervised learning method(s); and (iv) training, by one or more processors, an artificial neural network adapted to generate vector representations for natural language text, where the training is based, at least in part, on the received natural language text, the generated set of first metadata, and the generated set of second metadata.

2.20170162189Semi-supervised learning of word embeddings
US 08.06.2017
Int.Class G06F 17/27
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
17Digital computing or data processing equipment or methods, specially adapted for specific functions
20Handling natural language data
27Automatic analysis, e.g. parsing, orthograph correction
Appl.No 15437490 Applicant International Business Machines Corporation Inventor Liangliang Cao

Software that trains an artificial neural network for generating vector representations for natural language text, by performing the following steps: (i) receiving, by one or more processors, a set of natural language text; (ii) generating, by one or more processors, a set of first metadata for the set of natural language text, where the first metadata is generated using supervised learning method(s); (iii) generating, by one or more processors, a set of second metadata for the set of natural language text, where the second metadata is generated using unsupervised learning method(s); and (iv) training, by one or more processors, an artificial neural network adapted to generate vector representations for natural language text, where the training is based, at least in part, on the received natural language text, the generated set of first metadata, and the generated set of second metadata.

3.20160328388Semi-supervised learning of word embeddings
US 10.11.2016
Int.Class G06F 17/27
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
17Digital computing or data processing equipment or methods, specially adapted for specific functions
20Handling natural language data
27Automatic analysis, e.g. parsing, orthograph correction
Appl.No 14870204 Applicant International Business Machines Corporation Inventor Liangliang Cao

Software that trains an artificial neural network for generating vector representations for natural language text, by performing the following steps: (i) receiving, by one or more processors, a set of natural language text; (ii) generating, by one or more processors, a set of first metadata for the set of natural language text, where the first metadata is generated using supervised learning method(s); (iii) generating, by one or more processors, a set of second metadata for the set of natural language text, where the second metadata is generated using unsupervised learning method(s); and (iv) training, by one or more processors, an artificial neural network adapted to generate vector representations for natural language text, where the training is based, at least in part, on the received natural language text, the generated set of first metadata, and the generated set of second metadata.

4.20210287664Machine learning used to detect alignment and misalignment in conversation
US 16.09.2021
Int.Class G06N 3/08
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
3Computing arrangements based on biological models
02Neural networks
08Learning methods
Appl.No 16817944 Applicant Palo Alto Research Center Incorporated Inventor Evgeniy Bart

Digitized media is received that records a conversation between individuals. Cues are extracted from the digitized media that indicate properties of the conversation. The cues are entered as training data into a machine learning module to create a trained machine learning model. The trained machine learning model is used in a processor to detect other misalignments in subsequent digitized conversations.

5.20140188462System and method for analyzing ambiguities in language for natural language processing
US 03.07.2014
Int.Class G06F 17/00
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
17Digital computing or data processing equipment or methods, specially adapted for specific functions
Appl.No 14201974 Applicant Zadeh Lotfi A. Inventor Zadeh Lotfi A.

Specification covers new algorithms, methods, and systems for artificial intelligence, soft computing, and deep learning/recognition, e.g., image recognition (e.g., for action, gesture, emotion, expression, biometrics, fingerprint, facial, OCR (text), background, relationship, position, pattern, and object), large number of images (“Big Data”) analytics, machine learning, training schemes, crowd-sourcing (using experts or humans), feature space, clustering, classification, similarity measures, optimization, search engine, ranking, question-answering system, soft (fuzzy or unsharp) boundaries/impreciseness/ambiguities/fuzziness in language, Natural Language Processing (NLP), Computing-with-Words (CWW), parsing, machine translation, sound and speech recognition, video search and analysis (e.g. tracking), image annotation, geometrical abstraction, image correction, semantic web, context analysis, data reliability (e.g., using Z-number (e.g., “About 45 minutes; Very sure”)), rules engine, control system, autonomous vehicle, self-diagnosis and self-repair robots, system diagnosis, medical diagnosis, biomedicine, data mining, event prediction, financial forecasting, economics, risk assessment, e-mail management, database management, indexing and join operation, memory management, and data compression.

6.WO/2018/212710PREDICTIVE ANALYSIS METHODS AND SYSTEMS
WO 22.11.2018
Int.Class G06F 15/18
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
15Digital computers in general; Data processing equipment in general
18in which a program is changed according to experience gained by the computer itself during a complete run; Learning machines
Appl.No PCT/SG2018/050233 Applicant NATIONAL UNIVERSITY OF SINGAPORE Inventor HE, Xiangnan
Methods and systems for predictive analysis are disclosed, A predictive analysis method comprises: receiving a set of predictor variables as an input feature vector comprising a plurality of features; projecting each feature of the input feature vector onto a dense vector representation to obtain a set of embedding vectors presenting the input feature vector in an embedding space; calculating a set of interacted vectors, each interacted vector being an element-wise product of two embedding vectors of the set of embedding vectors; performing a weight sum over the interacted vectors, the weighted sum being weighted by a plurality of attention scores each corresponding to an interaction between a pair of features of the feature vector; and projecting the weighed sum to obtain a prediction score.
7.10303771Utilizing machine learning models to identify insights in a document
US 28.05.2019
Int.Class G06F 17/27
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
FELECTRIC DIGITAL DATA PROCESSING
17Digital computing or data processing equipment or methods, specially adapted for specific functions
20Handling natural language data
27Automatic analysis, e.g. parsing, orthograph correction
Appl.No 15896922 Applicant Capital One Services, LLC Inventor Joni Bridget Jezewski

A device receives document information associated with a document, and receives a request to identify insights in the document information. The device performs, based on the request, natural language processing on the document information to identify words, phrases, and sentences in the document information, and utilizes a first machine learning model with the words, the phrases, and the sentences to identify information indicating abstract insights, concrete insights, and non-insights in the document. The device utilizes a second machine learning model to match the abstract insights with particular concrete insights that are different than the concrete insights, and utilizes a third machine learning model to determine particular insights based on the non-insights. The device generates an insight document that includes the concrete insights, the abstract insights matched with the particular concrete insights, and the particular insights determined based on the non-insights.

8.3937170SPEECH ANALYSIS FOR MONITORING OR DIAGNOSIS OF A HEALTH CONDITION
EP 12.01.2022
Int.Class G10L 25/66
GPHYSICS
10MUSICAL INSTRUMENTS; ACOUSTICS
LSPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
25Speech or voice analysis techniques not restricted to a single one of groups G10L15/-G10L21/129
48specially adapted for particular use
51for comparison or discrimination
66for extracting parameters related to health condition
Appl.No 20185364 Applicant NOVOIC LTD Inventor WESTON JACK
The invention relates to a computer-implemented method of training a machine learning model for performing speech analysis for monitoring or diagnosis of a health condition. The method uses training data comprising audio speech data and comprises obtaining one or more linguistic representations that each encode a sub-word, word, or multiple word sequence, of the audio speech data; obtaining one or more audio representations that each encode audio content of a segment of the audio speech data; combining the linguistic representations and audio representations into an input sequence comprising: linguistic representations of a sequence of one or more words or sub-words of the audio speech data; and audio representations of segments of the audio speech data, where the segments together contain the sequence of the one or more words or sub-words. The method further includes training a machine learning model using unsupervised learning to map the input sequence to a target output to learn combined audio-linguistic representations of the audio speech data for use in speech analysis for monitoring or diagnosis of a health condition.
9.WO/2024/182046EFFICIENT HIDDEN MARKOV MODEL ARCHITECTURE AND INFERENCE RESPONSE
WO 06.09.2024
Int.Class G06N 7/01
GPHYSICS
06COMPUTING; CALCULATING OR COUNTING
NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
7Computing arrangements based on specific mathematical models
01Probabilistic graphical models, e.g. probabilistic networks
Appl.No PCT/US2023/086281 Applicant QUALCOMM INCORPORATED Inventor KESKIN, Mustafa
Certain aspects of the present disclosure provide techniques and apparatus for improved hidden Markov model (HMM)-based machine learning. A sequence of observations is accessed. A hidden Markov model (HMM) comprising a set of transition probabilities, a set of emission probabilities, a transition coefficient hyperparameter, and an emission coefficient hyperparameter is also accessed, and a first output inference from the HMM is generated based on the sequence of observations.
10.20240333578REAL-TIME MONITORING ECOSYSTEM
US 03.10.2024
Int.Class H04L 41/0631
HELECTRICITY
04ELECTRIC COMMUNICATION TECHNIQUE
LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
41Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
06Management of faults, events, alarms or notifications
0631using root cause analysis; using analysis of correlation between notifications, alarms or events based on decision criteria, e.g. hierarchy, tree or time analysis
Appl.No 18129306 Applicant CITIBANK, N.A. Inventor Japan Mehta

A network system to provide real-time integration and processing of user data with infrastructure data to generate solutions to user pain points. Real-time user data, including feedback and interactions, is generally not uniform and overwhelmingly large. The system provides solutions to user pain-points at scale, which, in some instances, may be unknown to the service provider. The system does so by contextually linking user data and categorizing it into standardized taxonomies. The infrastructure data is then analyzed against the taxonomies by the system's AI/ML network. The system then provides one or more pain point identifications and solutions. The system may also provide an interface to visualize the taxonomies, pain points, and trend analysis of the pain points.