- 专利标题: Detecting and mitigating poison attacks using data provenance
-
申请号: US16031953申请日: 2018-07-10
-
公开(公告)号: US11689566B2公开(公告)日: 2023-06-27
- 发明人: Nathalie Baracaldo-Angel , Bryant Chen , Evelyn Duesterwald , Heiko H. Ludwig
- 申请人: International Business Machines Corporation
- 申请人地址: US NY Armonk
- 专利权人: International Business Machines Corporation
- 当前专利权人: International Business Machines Corporation
- 当前专利权人地址: US NY Armonk
- 代理机构: Zilka-Kotab, P.C.
- 主分类号: H04L9/40
- IPC分类号: H04L9/40 ; G06N20/00 ; G06F18/21 ; G06F18/2113
摘要:
Computer-implemented methods, program products, and systems for provenance-based defense against poison attacks are disclosed. In one approach, a method includes: receiving observations and corresponding provenance data from data sources; determining whether the observations are poisoned based on the corresponding provenance data; and removing the poisoned observation(s) from a final training dataset used to train a final prediction model. Another implementation involves provenance-based defense against poison attacks in a fully untrusted data environment. Untrusted data points are grouped according to provenance signature, and the groups are used to train learning algorithms and generate complete and filtered prediction models. The results of applying the prediction models to an evaluation dataset are compared, and poisoned data points identified where the performance of the filtered prediction model exceeds the performance of the complete prediction model. Poisoned data points are removed from the set to generate a final prediction model.
公开/授权文献
信息查询