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公开(公告)号:US11341516B2
公开(公告)日:2022-05-24
申请号:US16877385
申请日:2020-05-18
Applicant: Adobe Inc.
Inventor: Xinyue Liu , Suofei Wu , Chang Liu , Jun He , Zhenyu Yan , Wuyang Dai , Shengyun Peng
Abstract: Introduced here are approaches for identifying the optimal send time for messages by accounting for hidden confounders, such as the content of those messages, delivery channel, etc. These approaches use a causal inference framework to discover and then remove the impact of hidden confounders. These approaches may be employed by a marketing and analytics platform (or simply “marketing platform”) that may be used to design, implement, or review digital marketing campaigns. The marketing platform can consider the send time as a treatment and then employ machine learning (ML) models that consider the send time, features of the recipient, and hidden confounders to produce a ranked series of send times with the effect of the hidden confounders marginalized. Approaches to performing offline evaluations that mimic A/B tests using data related to existing field experiments are also introduced here.
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公开(公告)号:US20220309523A1
公开(公告)日:2022-09-29
申请号:US17664601
申请日:2022-05-23
Applicant: Adobe Inc.
Inventor: Xinyue Liu , Suofei Wu , Chang Liu , Jun He , Zhenyu Yan , Wuyang Dai , Shengyun Peng
Abstract: Introduced here are approaches for identifying the optimal send time for messages by accounting for hidden confounders, such as the content of those messages, delivery channel, etc. These approaches use a causal inference framework to discover and then remove the impact of hidden confounders. These approaches may be employed by a marketing and analytics platform (or simply “marketing platform”) that may be used to design, implement, or review digital marketing campaigns. The marketing platform can consider the send time as a treatment and then employ machine learning (ML) models that consider the send time, features of the recipient, and hidden confounders to produce a ranked series of send times with the effect of the hidden confounders marginalized. Approaches to performing offline evaluations that mimic A/B tests using data related to existing field experiments are also introduced here.
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公开(公告)号:US11233920B1
公开(公告)日:2022-01-25
申请号:US16952137
申请日:2020-11-19
Applicant: Adobe Inc.
Inventor: Xiaoyi Wang , Shayan Chandrashekar , Sangeeta Varma , Paul Asente , Michal Lukac , Chang Liu
Abstract: Methods and systems disclosed herein relate generally to systems and methods for transforming document elements in response to modifications to a layout of a document. A layout-modification application identifies, from a first document having a first document layout, a first set of measurements of a document element and a first location of the document element within the first document. Based on an aspect-ratio difference between the first document layout and a second document layout, the layout-modification application selects a set of transformation rules that specify, for the document element, a second set of measurements and a second location within a second document. To select the particular set of transformation rules, the layout-modification application uses the determined aspect-ratio difference. The layout-modification application applies the selected set of transformation rules to the document element.
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公开(公告)号:US20210357952A1
公开(公告)日:2021-11-18
申请号:US16877385
申请日:2020-05-18
Applicant: Adobe Inc.
Inventor: Xinyue Liu , Suofei Wu , Chang Liu , Jun He , Zhenyu Yan , Wuyang Dai , Shengyun Peng
Abstract: Introduced here are approaches for identifying the optimal send time for messages by accounting for hidden confounders, such as the content of those messages, delivery channel, etc. These approaches use a causal inference framework to discover and then remove the impact of hidden confounders. These approaches may be employed by a marketing and analytics platform (or simply “marketing platform”) that may be used to design, implement, or review digital marketing campaigns. The marketing platform can consider the send time as a treatment and then employ machine learning (ML) models that consider the send time, features of the recipient, and hidden confounders to produce a ranked series of send times with the effect of the hidden confounders marginalized. Approaches to performing offline evaluations that mimic A/B tests using data related to existing field experiments are also introduced here.
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