Distributed Anomaly Detection using 1-class SVM for Vertically Partitioned Data
There has been a tremendous increase in the volume of sensor data collected over the last decade
for different monitoring tasks. For example, petabytes of earth science data are collected from modern
satellites, in-situ sensors and different climate models. Similarly, huge amount of flight operational data
is downloaded for different commercial airlines. These different types of datasets need to be analyzed
for finding outliers. Information extraction from such rich data sources using advanced data mining
methodologies is a challenging task not only due to the massive volume of data, but also because these
datasets are physically stored at different geographical locations with only a subset of features available
at any location. Moving these petabytes of data to a single location may waste a lot of bandwidth.
To solve this problem, in this paper, we present a novel algorithm which can identify outliers in the
entire data without moving all the data to a single location. The method we propose only centralizes
a very small sample from the different data subsets at different locations. We analytically prove and
experimentally verify that the algorithm offers high accuracy compared to complete centralization with
only a fraction of the communication cost. We show that our algorithm is highly relevant to both earth
sciences and aeronautics by describing applications in these domains. The performance of the algorithm
is demonstrated on two large publicly available datasets: (1) the NASA MODIS satellite images and (2) a
simulated aviation dataset generated by the ‘Commercial Modular Aero-Propulsion System Simulation’ (CMAPSS).
Complete Metadata
| @type | dcat:Dataset |
|---|---|
| accessLevel | public |
| accrualPeriodicity | irregular |
| bureauCode |
[
"026:00"
]
|
| contactPoint |
{
"fn": "Kanishka Bhaduri",
"@type": "vcard:Contact",
"hasEmail": "mailto:kanishka.bhaduri-1@nasa.gov"
}
|
| description | There has been a tremendous increase in the volume of sensor data collected over the last decade for different monitoring tasks. For example, petabytes of earth science data are collected from modern satellites, in-situ sensors and different climate models. Similarly, huge amount of flight operational data is downloaded for different commercial airlines. These different types of datasets need to be analyzed for finding outliers. Information extraction from such rich data sources using advanced data mining methodologies is a challenging task not only due to the massive volume of data, but also because these datasets are physically stored at different geographical locations with only a subset of features available at any location. Moving these petabytes of data to a single location may waste a lot of bandwidth. To solve this problem, in this paper, we present a novel algorithm which can identify outliers in the entire data without moving all the data to a single location. The method we propose only centralizes a very small sample from the different data subsets at different locations. We analytically prove and experimentally verify that the algorithm offers high accuracy compared to complete centralization with only a fraction of the communication cost. We show that our algorithm is highly relevant to both earth sciences and aeronautics by describing applications in these domains. The performance of the algorithm is demonstrated on two large publicly available datasets: (1) the NASA MODIS satellite images and (2) a simulated aviation dataset generated by the ‘Commercial Modular Aero-Propulsion System Simulation’ (CMAPSS). |
| distribution |
[
{
"@type": "dcat:Distribution",
"title": "DAnom.pdf",
"format": "PDF",
"mediaType": "application/pdf",
"description": "DAnom.pdf",
"downloadURL": "https://c3.nasa.gov/dashlink/static/media/publication/DAnom_2.pdf"
}
]
|
| identifier | DASHLINK_367 |
| issued | 2011-05-05 |
| keyword |
[
"ames",
"dashlink",
"nasa"
]
|
| landingPage | https://c3.nasa.gov/dashlink/resources/367/ |
| modified | 2025-03-31 |
| programCode |
[
"026:029"
]
|
| publisher |
{
"name": "Dashlink",
"@type": "org:Organization"
}
|
| title | Distributed Anomaly Detection using 1-class SVM for Vertically Partitioned Data |