Patents by Inventor Avraham Faizakof

Avraham Faizakof has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20250258850
    Abstract: A method for generating a hierarchical taxonomy relating to an interaction aspect from conversation data. The method includes a first process for generating insights that includes: receiving conversation data for a first interaction; determining a conversation portion relevant to the interaction aspect and a question prompt and providing them as inputs to an LLM; and generating responsive output text via the LLM as the first insight. In a second process, inputs are provided to the LLM that include the insights, a first instruction to generate category names based on the insights, and a second instruction to make a category assignment for each insight. The second process further includes receiving from the LLM the generated category names and category assignments; grouping the insights by those having the same category assignment; and generating a hierarchical taxonomy according to the groupings.
    Type: Application
    Filed: February 14, 2024
    Publication date: August 14, 2025
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: LEV HAIKIN, NELLY DAVID, EYAL ORBACH, AVRAHAM FAIZAKOF
  • Publication number: 20250252109
    Abstract: The present invention relates generally to the technological field of search engines. More specifically, the present invention relates to detecting statistical irregularities in data and retrieving records pertaining to these irregularities. The invention represents a system and methods of retrieving records from an indexed database which provide an improvement of the technological field of search engines and information retrieval by making the detection and retrieval of records representing statistical irregularities in the database faster, more efficient, and less computationally complex.
    Type: Application
    Filed: February 5, 2024
    Publication date: August 7, 2025
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: AVRAHAM FAIZAKOF, ROTEM MAOZ, LEV HAIKIN, EYAL ORBACH, NELLY DAVID, RAKESH TAILOR, ANIK DEY
  • Publication number: 20250165720
    Abstract: A method in a contact center for generating insights from conversation data derived from interactions and storing the insights in an index. The method may include: determining an insight type; based on the insight type, determining inputs including a question prompt, answer prefix, and relevant portion of the conversation data; inputting the inputs into a LLM configured to receive the inputs and generate output text answering a question contained in the question prompt pursuant to an answer form suggested by the answer prefix given content contained in the relevant portion of the conversation data; generating the output text via operation of the LLM; transforming the output text of the first insight via a sentence transformer into vector embedding representative of a semantic meaning of the output text; and storing the computed vector embedding of the first insight in the index.
    Type: Application
    Filed: November 2, 2023
    Publication date: May 22, 2025
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: LEV HAIKIN, AVRAHAM FAIZAKOF, NELLY DAVID, EYAL ORBACH, ROTEM MAOZ
  • Publication number: 20250117586
    Abstract: A system and method of identifying occurrence of a semantic variation of a phrase in a passage by at least one processor may include calculating a phrase embedding vector, representing a semantic meaning of the phrase; extracting, from a textual representation of the passage, at least one hierarchical set of nested sequences of words; for each sequence, calculating a corresponding sequence embedding vector, representing a semantic meaning of the sequence; for one or more sequence embedding vectors, calculating a corresponding vector similarity value, representing similarity of the sequence embedding vectors to the phrase embedding vector, identifying a sequence corresponding to a maximal vector similarity value of the one or more vector similarity values; and determining the identified sequence as a semantic variation of the phrase, based on the maximal vector similarity value.
    Type: Application
    Filed: October 10, 2023
    Publication date: April 10, 2025
    Inventors: Eyal Orbach, Avraham Faizakof, Lev Haikin, Nelly David, Rotem Moaz
  • Publication number: 20240211701
    Abstract: A method for generating automatic alternative text suggestions for a speech recognition engine of a contact center system according to an embodiment includes applying a word embedding model to generate a vector representation of each unique word in a contact center communication text corpus, calculating a cosine similarity of each vector representation and each other vector representation generated by the word embedding model, discarding each calculated cosine similarity result determined to be below a predefined threshold to generate a filtered set of word pairs, calculating a Levenshtein distance between words of each word pair of the filtered set of word pairs, and generating a candidate list of alternative words for a target word based on the Levenshtein distance between the words of each word pair of the filtered set of word pairs.
    Type: Application
    Filed: December 23, 2022
    Publication date: June 27, 2024
    Inventors: Lev Haikin, Avraham Faizakof, Rotem Maoz, Eyal Orbach, Nelly David
  • Publication number: 20240211690
    Abstract: A method for inverse text normalization of contact center communications according to an embodiment includes performing named entity recognition on text from a contact center communication to identify one or more entities in the text, normalizing each of the identified one or more entities in the text using weighted finite-state transducers, and normalizing at least one entity identified in the text using a large language model in response to determining that the at least one entity identified in the text was unable to be normalized using the weighted finite-state transducers.
    Type: Application
    Filed: December 23, 2022
    Publication date: June 27, 2024
    Inventors: Avraham Faizakof, Lev Haikin, Rotem Maoz, Eyal Orbach, Nelly David
  • Patent number: 12001797
    Abstract: A method and system for automatic topic detection in text may include receiving a text document of a corpus of documents and extracting one or more phrases from the document, based on one or more syntactic patterns. For each phrase, embodiments of the invention may: apply a word embedding neural network on one or more words of the phrase, to obtain one or more respective word embedding vectors; calculate a weighted phrase embedding vector, and compute a phrase saliency score, based on the weighted phrase embedding vector. Embodiments of the invention may subsequently produce one or more topic labels, representing one or more respective topics in the document, based on the computed phrase saliency scores, and may select one or more topic labels according to their relevance to the business domain of the corpus.
    Type: Grant
    Filed: May 12, 2021
    Date of Patent: June 4, 2024
    Inventors: Eyal Orbach, Avraham Faizakof, Arnon Mazza, Lev Haikin
  • Patent number: 11984116
    Abstract: A system and method of automatically discovering unigrams in a speech data element may include receiving a language model that includes a plurality of n-grams, where each n-gram includes one or more unigrams; applying an acoustic machine-learning (ML) model on one or more speech data elements to obtain a character distribution function; applying a greedy decoder on the character distribution function, to predict an initial corpus of unigrams; filtering out one or more unigrams of the initial corpus to obtain a corpus of candidate unigrams, where the candidate unigrams are not included in the language model; analyzing the one or more first speech data elements, to extract at least one n-gram that comprises a candidate unigram; and updating the language model to include the extracted at least one n-gram.
    Type: Grant
    Filed: November 8, 2021
    Date of Patent: May 14, 2024
    Inventors: Lev Haikin, Arnon Mazza, Eyal Orbach, Avraham Faizakof
  • Publication number: 20230144379
    Abstract: A system and method of automatically discovering unigrams in a speech data element may include receiving a language model that includes a plurality of n-grams, where each n-gram includes one or more unigrams; applying an acoustic machine-learning (ML) model on one or more speech data elements to obtain a character distribution function; applying a greedy decoder on the character distribution function, to predict an initial corpus of unigrams; filtering out one or more unigrams of the initial corpus to obtain a corpus of candidate unigrams, where the candidate unigrams are not included in the language model; analyzing the one or more first speech data elements, to extract at least one n-gram that comprises a candidate unigram; and updating the language model to include the extracted at least one n-gram.
    Type: Application
    Filed: November 8, 2021
    Publication date: May 11, 2023
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: LEV HAIKIN, ARNON MAZZA, EYAL ORBACH, AVRAHAM FAIZAKOF
  • Patent number: 11645460
    Abstract: A first text corpus comprising punctuated and capitalized text is received. The words in the first text corpus are then annotated with a set of labels indicating a punctuation and a capitalization of each word. At an initial training stage, a machine learning model is trained on a first training set using the annotated words from the first text corpus and the labels. A second text corpus is received representing conversational speech. The words in the second text corpus are then annotated with the set of labels. In a re-training stage, the machine learning model is re-trained on a second training set comprising the annotated words from the second text corpus, and the labels. At an inference stage, the trained machine learning model is applied to a target set of words representing conversational speech to predict a punctuation and capitalization of each word in the target set.
    Type: Grant
    Filed: December 28, 2020
    Date of Patent: May 9, 2023
    Inventors: Avraham Faizakof, Arnon Mazza, Lev Haikin, Eyal Orbach
  • Patent number: 11586828
    Abstract: Methods, systems, and computer program product for automatically performing sentiment analysis on texts, such as telephone call transcripts and electronic written communications. Disclosed techniques include, inter alia, lexicon training, handling of negations and shifters, pruning of lexicons, confidence calculation for token orientation, supervised customization, lexicon mixing, and adaptive segmentation.
    Type: Grant
    Filed: August 25, 2020
    Date of Patent: February 21, 2023
    Inventors: Amir Lev-Tov, Avraham Faizakof, Arnon Mazza, Yochai Konig
  • Patent number: 11562148
    Abstract: Methods, systems, and computer program product for automatically performing sentiment analysis on texts, such as telephone call transcripts and electronic written communications. Disclosed techniques include, inter alia, lexicon training, handling of negations and shifters, pruning of lexicons, confidence calculation for token orientation, supervised customization, lexicon mixing, and adaptive segmentation.
    Type: Grant
    Filed: August 25, 2020
    Date of Patent: January 24, 2023
    Inventors: Amir Lev-Tov, Avraham Faizakof, Arnon Mazza, Yochai Konig
  • Patent number: 11551011
    Abstract: Methods, systems, and computer program product for automatically performing sentiment analysis on texts, such as telephone call transcripts and electronic written communications. Disclosed techniques include, inter alia, lexicon training, handling of negations and shifters, pruning of lexicons, confidence calculation for token orientation, supervised customization, lexicon mixing, and adaptive segmentation.
    Type: Grant
    Filed: August 25, 2020
    Date of Patent: January 10, 2023
    Inventors: Amir Lev-Tov, Avraham Faizakof, Arnon Mazza, Yochai Konig
  • Publication number: 20220382982
    Abstract: A method and system for automatic topic detection in text may include receiving a text document of a corpus of documents and extracting one or more phrases from the document, based on one or more syntactic patterns. For each phrase, embodiments of the invention may: apply a word embedding neural network on one or more words of the phrase, to obtain one or more respective word embedding vectors; calculate a weighted phrase embedding vector, and compute a phrase saliency score, based on the weighted phrase embedding vector. Embodiments of the invention may subsequently produce one or more topic labels, representing one or more respective topics in the document, based on the computed phrase saliency scores, and may select one or more topic labels according to their relevance to the business domain of the corpus.
    Type: Application
    Filed: May 12, 2021
    Publication date: December 1, 2022
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: EYAL ORBACH, AVRAHAM FAIZAKOF, ARNON MAZZA, LEV HAIKIN
  • Publication number: 20220366197
    Abstract: A method and system for finetuning automated sentiment classification by at least one processor may include: receiving a first machine learning (ML) model M0, pretrained to perform automated sentiment classification of utterances, based on a first annotated training dataset; associating one or more instances of model M0 to one or more corresponding sites; and for one or more (e.g., each) ML model M0 instance and/or site: receiving at least one utterance via the corresponding site; obtaining at least one data element of annotated feedback, corresponding to the at least one utterance; retraining the ML model M0, to produce a second ML model Mi, based on a second annotated training dataset, wherein the second annotated training dataset may include the first annotated training dataset and the at least one annotated feedback data element; and using the second ML model Mi, to classify utterances according to one or more sentiment classes.
    Type: Application
    Filed: May 12, 2021
    Publication date: November 17, 2022
    Applicant: GENESYS CLOUD SERVICES, INC.
    Inventors: ARNON MAZZA, LEV HAIKIN, EYAL ORBACH, AVRAHAM FAIZAKOF
  • Patent number: 11425255
    Abstract: A system and method are presented for dialogue tree generation. The dialogue tree may be used for generating a chatbot. Similar phrases from phrases comprising the interactions between a first party and a second party are group together from the first party of a cluster. For each group of similar phrases, percentages are determined and compared against a threshold occurrence rate. Anchors are generated and used in alignment in the determination of dialogue flows. Topic-specific dialogue trees may be determined from the dialogue flows. The topic-specific dialogue trees may be modified to generate a deterministic dialogue tree.
    Type: Grant
    Filed: October 27, 2019
    Date of Patent: August 23, 2022
    Inventors: Arnon Mazza, Avraham Faizakof, Amir Lev-Tov, Tamir Tapuhi, Yochai Konig
  • Patent number: 11425254
    Abstract: A system and method are presented for configuring topic-specific chatbots. Clustering interaction transcripts between customers and agents of a contact center is performed to generated a plurality of interaction clusters. The clusters corresponding a topic. Topic-specific dialogue trees are extracted for each cluster. The trees comprise nodes connected by edges. The topic-specific dialogue tree is modified to generate a deterministic dialogue tree. The deterministic dialogue tree is used to configure a topic-specific chatbot to generate and automatically respond to messages regarding the topic.
    Type: Grant
    Filed: October 27, 2019
    Date of Patent: August 23, 2022
    Inventors: Arnon Mazza, Avraham Faizakof, Amir Lev-Tov, Tamir Tapuhi, Yochai Konig
  • Publication number: 20220208176
    Abstract: A method comprising: receiving a first text corpus comprising punctuated and capitalized text; annotating words in said first text corpus with a set of labels indicating a punctuation and a capitalization of each word; at an initial training stage, training a machine learning model on a first training set comprising: (i) said annotated words in said first text corpus, and (ii) said labels; receiving a second text corpus representing conversational speech; annotating words in said second text corpus with said set of labels; at a re-training stage, re-training said machine learning model on a second training set comprising: (iii) said annotated words in said second text corpus, and (iv) said labels; and at an inference stage, applying said trained machine learning model to a target set of words representing conversational speech, to predict a punctuation and capitalization of each word in said target set.
    Type: Application
    Filed: December 28, 2020
    Publication date: June 30, 2022
    Applicant: GENESYS TELECOMMUNICATIONS LABORATORIES, INC.
    Inventors: AVRAHAM FAIZAKOF, ARNON MAZZA, LEV HAIKIN, EYAL ORBACH
  • Patent number: 11341986
    Abstract: A method comprising: receiving a plurality of audio segments comprising a speech signal, wherein said audio segments represent a plurality of verbal interactions; receiving labels associated with an emotional state expressed in each of said audio segments; dividing each of said audio segments into a plurality of frames, based on a specified frame duration; extracting a plurality of acoustic features from each of said frames; computing statistics over said acoustic features with respect to sequences of frames representing phoneme boundaries in said audio segments; at a training stage, training a machine learning model on a training set comprising: said statistics associated with said audio segments, and said labels; and at an inference stage, applying said trained model to one or more target audio segments comprising a speech signal, to detect an emotional state expressed in said target audio segments.
    Type: Grant
    Filed: December 20, 2019
    Date of Patent: May 24, 2022
    Inventors: Avraham Faizakof, Lev Haikin, Yochai Konig, Arnon Mazza
  • Patent number: 11170168
    Abstract: A method, system, and computer program product for unsupervised automated generation of lexicons in a specified target domain, comprising tokens having domain-specific sentiment orientation, by selecting a seed set of tokens from a source lexicon; generating a candidate set of tokens from a text corpus in the target domain based on a similarity parameter with the seed set; calculating a sentiment score for each of the tokens in the candidate set; and automatically updating the source lexicon based on the candidate list.
    Type: Grant
    Filed: April 11, 2019
    Date of Patent: November 9, 2021
    Inventors: Amir Lev-Tov, Avraham Faizakof, Arnon Mazza, Yochai Konig