SYSTEMS AND METHODS FOR PROVIDING CUSTOMER-BEHAVIOR-BASED DYNAMIC ENHANCED ORDER CONVERSION

    公开(公告)号:US20240095802A1

    公开(公告)日:2024-03-21

    申请号:US17932463

    申请日:2022-09-15

    IPC分类号: G06Q30/06 G06Q30/02

    摘要: A device may receive dynamic customer data and static customer data, and may calculate additional customer data based on the dynamic customer data and the static customer data. The device may process the static customer data, the dynamic customer data, and the additional customer data, with a first machine learning model, to determine a next action prediction, and may process the static customer data, the dynamic customer data, and the additional customer data, with a second machine learning model, to determine a next sequence prediction. The device may concatenate the static customer data, the dynamic customer data, the additional customer data, the next action prediction, and the next sequence prediction to generate concatenated data, and may process the concatenated data, with a plurality of machine learning models, to calculate various outputs, and may generate a recommendation for the customer based on the various outputs.

    SYSTEMS AND METHODS FOR SEMANTIC SEPARATION OF MULTIPLE INTENTIONS IN TEXT DATA USING REINFORCEMENT LEARNING

    公开(公告)号:US20240160847A1

    公开(公告)日:2024-05-16

    申请号:US18055211

    申请日:2022-11-14

    IPC分类号: G06F40/30

    CPC分类号: G06F40/30

    摘要: A device may identify, in multi-context text data, unrelated text and coreference text, and may extract coreference clusters, coreference sentences, and coreference sentiments based on the coreference text. The device may extract unrelated sentences from the unrelated text, and may assign tenses to the coreference sentences and the unrelated sentences. The device may extract phrases and entities from the coreference sentences and unrelated sentences, and may assign tense flags that exclude present tense sentences. The device may select past tense phrases and future tense phrases, and may combine the past tense phrases and the future tense phrases to generate phrases. The device may identify invalid phrases in the phrases, and may identify similarities between the coreference sentences and the invalid phrases. The device may process the coreference text, the coreference tenses, the coreference sentiments, and the similarities, with a reinforcement learning model, to generate final context text.