Coniferest: a complete active anomaly detection framework
proceeding from Data Analytics and Management in Data Intensive Domains (DAMDID) 2024 We present coniferest, an open source generic purpose active anomaly detection framework written in Python. The package design and implemented algorithms are described. Currently, static outlier detection analysis...
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Zusammenfassung: | proceeding from Data Analytics and Management in Data Intensive
Domains (DAMDID) 2024 We present coniferest, an open source generic purpose active anomaly
detection framework written in Python. The package design and implemented
algorithms are described. Currently, static outlier detection analysis is
supported via the Isolation forest algorithm. Moreover, Active Anomaly
Discovery (AAD) and Pineforest algorithms are available to tackle active
anomaly detection problems. The algorithms and package performance are
evaluated on a series of synthetic datasets. We also describe a few success
cases which resulted from applying the package to real astronomical data in
active anomaly detection tasks within the SNAD project. |
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DOI: | 10.48550/arxiv.2410.17142 |