GENERATIVE ARTIFICIAL INTELLIGENCE POWERED RESPONSE GENERATION, VALIDATION, AND AUGMENTATION

    公开(公告)号:US20250103822A1

    公开(公告)日:2025-03-27

    申请号:US18372462

    申请日:2023-09-25

    Applicant: Adobe Inc.

    Abstract: System and methods for generating, validating, and augmenting question-answer pairs using generative AI are provided. An online interaction server accesses a set of digital content available at a set of designated network locations. The online interaction server further trains a pre-trained large language model (LLM) using the set of digital content to obtain a customized LLM. The online interaction server generates a set of question-answer pairs based on the set of digital content using the customized LLM and validates the set of question-answer pairs by determining if an answer in a question-answer pair is derived from the set of digital content. The online interaction server also selects a digital asset to augment an answer in a validated question-answer pair based on a semantic similarity between the validated question-answer pair and the digital asset.

    Language model with external knowledge base

    公开(公告)号:US11997056B2

    公开(公告)日:2024-05-28

    申请号:US17897419

    申请日:2022-08-29

    Applicant: ADOBE INC.

    CPC classification number: H04L51/02 G06F40/295 G06N5/022

    Abstract: The technology described herein receives a natural-language sequence of words comprising multiple entities. The technology then identifies a plurality of entities in the natural-language sequence. The technology generates a masked natural-language sequence by masking a first entity in the natural-language sequence. The technology retrieves, from a knowledge base, information related to a second entity in the plurality of entities. The technology then trains a natural-language model to respond to a query. The training uses a first representation of the masked natural-language sequence, a second representation of the information, and the first entity.

    HIERARCHICAL TOPIC MODEL WITH AN INTERPRETABLE TOPIC HIERARCHY

    公开(公告)号:US20240004912A1

    公开(公告)日:2024-01-04

    申请号:US17853141

    申请日:2022-06-29

    Applicant: Adobe Inc.

    Abstract: Some techniques described herein relate to generating a hierarchical topic model (HTM), which can be used to generate custom content. In one example, a method includes determining first-level topics in a topic hierarchy related to a corpus of documents. A first-level topic of the first-level topics includes multiple words. The multiple words are grouped into clusters based on word embeddings of the multiple words. The multiple words are then subdivided into second-level topics as subtopics of the first-level topic, such that the number of second-level topics equals the number of clusters. A document of the corpus of documents is assigned to the first-level topic and to a second-level topic of the second-level topics, and an indication is received of access by a user to the document. Custom content is generated for the user based on one or more other documents assigned to the first-level topic and the second-level topic.

    GENERATING COMMONSENSE CONTEXT FOR TEXT USING KNOWLEDGE GRAPHS

    公开(公告)号:US20230153534A1

    公开(公告)日:2023-05-18

    申请号:US17526824

    申请日:2021-11-15

    Applicant: ADOBE INC.

    CPC classification number: G06F40/295 G06F16/3329 G06N20/00

    Abstract: Methods and systems are provided for facilitating generation and utilization of a commonsense contextualizing machine learning (ML) model, in accordance with embodiments described herein. In embodiments, a commonsense contextual ML model is trained by fine-tuning a pre-trained language model using a set of training path-sentence pairs. Each training path-sentence pair includes a commonsense path, identified via a commonsense knowledge graph, and a natural language sentence identified as contextually related to the commonsense path. The trained commonsense contextualizing ML model can then be used to generate a commonsense inference path for a text input. Such a commonsense inference path can include a sequence of entities and relations that provide commonsense context to the text input. Thereafter, the commonsense inference path can be provided to a natural language processing system for use in performing a natural language processing task.

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