- 专利标题: Multi-task learning framework for multi-context machine learning
-
申请号: US16902587申请日: 2020-06-16
-
公开(公告)号: US11604990B2公开(公告)日: 2023-03-14
- 发明人: Xiao Yan , Wenjia Ma , Jaewon Yang , Jacob Bollinger , Qi He , Lin Zhu , How Jing
- 申请人: Microsoft Technology Licensing, LLC
- 申请人地址: US WA Redmond
- 专利权人: Microsoft Technology Licensing, LLC
- 当前专利权人: Microsoft Technology Licensing, LLC
- 当前专利权人地址: US WA Redmond
- 代理机构: Schwegman Lundberg & Woessner, P.A.
- 主分类号: G06N3/08
- IPC分类号: G06N3/08 ; G06F9/48 ; H04L67/50 ; G06F30/27 ; G06N3/02
摘要:
In an example embodiment, a framework to infer a user's value for a particular attribute based upon a multi-task machine learning process with uncertainty weighting that incorporates signals from multiple contexts is provided. In an example embodiment, the framework aims to measure a level of a user attribute under a certain context. Rather than attempting to devise a universal, one-size-fits-all value for the attribute, the framework acknowledges that the user's value for that attribute can vary depending on context and factors in the context under which the user's attribute levels are measured. Multiple contexts are defined depending on different situations where users and entities such as companies and organizations need to evaluate user attribute levels. Signals for attribute levels are then collected for each context. Machine learning models are utilized to estimate attribute values for different contexts. Multi-task deep learning is used to level attributes from different contexts.
公开/授权文献
信息查询