SUBCOMPONENT MODEL TRAINING
    1.
    发明公开

    公开(公告)号:US20230229957A1

    公开(公告)日:2023-07-20

    申请号:US17576724

    申请日:2022-01-14

    CPC classification number: G06N20/00

    Abstract: Methods, apparatuses, and computer-program products are disclosed. The method may include inputting one or more subcomponent training datasets into the plurality of subcomponent models of the machine learning model, the machine learning model may be configured to perform a final task, and the plurality of subcomponent models may be configured to perform sequential subtasks that result in the final task. The method may include computing one or more weights for data points of the one or more subcomponent training datasets and the one or more weights may be based on a contribution of the data points to an end-to-end error loss measurement associated with performing the final task of the machine learning model. The method may include training the plurality of subcomponent models based on the one or more weights for the data points of the one or more subcomponent training datasets.

    SYSTEMS AND METHODS FOR OPEN DOMAIN MULTI-HOP QUESTION ANSWERING

    公开(公告)号:US20220383159A1

    公开(公告)日:2022-12-01

    申请号:US17534085

    申请日:2021-11-23

    Abstract: Embodiments described herein provide a fusion-in-decoder (FID) based model (referred to as “PATHID”) for open-domain multi-hop question answering. Specifically, PATHID addresses the gap between the general behavior of the FID model on single-hop and multi-hop question answering, and provides more transparency into the reasoning path. In addition to answer generation, PATHID explicitly models the full reasoning path to resolve the answer with a generative sequence-to-sequence model.

    SYSTEMS AND METHODS FOR KNOWLEDGE BASE QUESTION ANSWERING USING GENERATION AUGMENTED RANKING

    公开(公告)号:US20230055188A1

    公开(公告)日:2023-02-23

    申请号:US17565215

    申请日:2021-12-29

    Abstract: Embodiments described herein provide a question answering approach that answers a question by generating an executable logical form. First, a ranking model is used to select a set of good logical forms from a pool of logical forms obtained by searching over a knowledge graph. The selected logical forms are good in the sense that they are close to (or exactly match, in some cases) the intents in the question and final desired logical form. Next, a generation model is adopted conditioned on the question as well as the selected logical forms to generate the target logical form and execute it to obtain the final answer. For example, at inference stage, when a question is received, a matching logical form is identified from the question, based on which the final answer can be generated based on the node that is associated with the matching logical form in the knowledge base.

    SYSTEMS AND METHODS FOR HIERARCHICAL RETRIEVAL OF SEMANTIC-BASED PASSAGES IN DEEP LEARNING

    公开(公告)号:US20220374459A1

    公开(公告)日:2022-11-24

    申请号:US17533613

    申请日:2021-11-23

    Abstract: Embodiments described herein provide a dense hierarchical retrieval for open-domain question and answering for a corpus of documents using a document-level and passage-level dense retrieval model. Specifically, each document is viewed as a structural collection that has sections, subsections and paragraphs. Each document may be split into short length passages, where a document-level retrieval model and a passage-level retrieval model may be applied to return a smaller set of filtered texts. Top documents may be identified after encoding the question and the documents and determining document relevance scores to the encoded question. Thereafter, a set of top passages are further identified based on encoding of the passages and determining passage relevance scores to the encoded question. The document and passage relevance scores may be used in combination to determine a final retrieval ranking for the documents having the set of top passages.

    SYSTEMS AND METHODS FOR KNOWLEDGE BASE QUESTION ANSWERING USING GENERATION AUGMENTED RANKING

    公开(公告)号:US20230059870A1

    公开(公告)日:2023-02-23

    申请号:US17565305

    申请日:2021-12-29

    Abstract: Embodiments described herein provide a question answering approach that answers a question by generating an executable logical form. First, a ranking model is used to select a set of good logical forms from a pool of logical forms obtained by searching over a knowledge graph. The selected logical forms are good in the sense that they are close to (or exactly match, in some cases) the intents in the question and final desired logical form. Next, a generation model is adopted conditioned on the question as well as the selected logical forms to generate the target logical form and execute it to obtain the final answer. For example, at inference stage, when a question is received, a matching logical form is identified from the question, based on which the final answer can be generated based on the node that is associated with the matching logical form in the knowledge base.

Patent Agency Ranking