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- W1761103986 abstract "An anomaly is an observation that does not conform to the expected normal behavior. With the ever increasing amount of data being collected universally, automatic surveillance systems are becoming more popular and are increasingly using data mining methods to detect patterns of anomalies. Detecting anomalies can provide useful and actionable information in a variety of real-world scenarios. For example, in disease monitoring, a timely detection of an epidemic can potentially save many lives. The diverse nature of real-world datasets, and the difficulty of obtaining labeled training data make it challenging to develop a universal framework for anomaly detection. We focus on a key feature of most real world scenarios, that multiple anomalous records are usually generated by a common anomalous process. In this thesis we develop methods that utilize the similarity between records in these groups or patterns of anomalies to perform better detection. We also investigate new methods for detection of individual record anomalies, which we then incorporate into the group detection methods. A recurring feature of our methods is combinatorial search over some space (e.g. over all subsets of attributes, or over all subsets of records). We use a variety of computational speedup tricks and approximation techniques to make these methods scalable to large datasets. Since most of our motivating problems involve datasets having categorical or symbolic values, we focus on categorical valued datasets. Apart from this, we make few assumptions about the data, and our methods are very general and applicable to a wide variety of domains. Additionally, we investigate anomaly pattern detection in data structured by space and time. Our method generalizes the popular method of spatio-temporal scan statistics to learn and detect specific, time-varying spatial patterns in the data. Finally, we show an efficient and easily interpretable technique for anomaly detection in multivariate time series data. We evaluate our methods on a variety of real world data sets including both real and synthetic anomalies." @default.
- W1761103986 created "2016-06-24" @default.
- W1761103986 creator A5008962573 @default.
- W1761103986 creator A5055199976 @default.
- W1761103986 date "2009-01-01" @default.
- W1761103986 modified "2023-10-16" @default.
- W1761103986 title "Detecting patterns of anomalies" @default.
- W1761103986 cites W133743037 @default.
- W1761103986 cites W136084151 @default.
- W1761103986 cites W1484413656 @default.
- W1761103986 cites W1487950779 @default.
- W1761103986 cites W1496744709 @default.
- W1761103986 cites W1529618148 @default.
- W1761103986 cites W1531520279 @default.
- W1761103986 cites W1535668279 @default.
- W1761103986 cites W1543388142 @default.
- W1761103986 cites W1556024794 @default.
- W1761103986 cites W1564125115 @default.
- W1761103986 cites W1566480186 @default.
- W1761103986 cites W1567857055 @default.
- W1761103986 cites W1577117059 @default.
- W1761103986 cites W1583975142 @default.
- W1761103986 cites W1584132941 @default.
- W1761103986 cites W1591480890 @default.
- W1761103986 cites W1601184934 @default.
- W1761103986 cites W1763728792 @default.
- W1761103986 cites W1941427975 @default.
- W1761103986 cites W1968114659 @default.
- W1761103986 cites W1970143540 @default.
- W1761103986 cites W1973156630 @default.
- W1761103986 cites W1974534365 @default.
- W1761103986 cites W1975061413 @default.
- W1761103986 cites W1980756451 @default.
- W1761103986 cites W1988918299 @default.
- W1761103986 cites W1989037929 @default.
- W1761103986 cites W1991370590 @default.
- W1761103986 cites W1993265270 @default.
- W1761103986 cites W1995003166 @default.
- W1761103986 cites W2002151188 @default.
- W1761103986 cites W2005165739 @default.
- W1761103986 cites W2008155663 @default.
- W1761103986 cites W2010496837 @default.
- W1761103986 cites W2016305103 @default.
- W1761103986 cites W2017805816 @default.
- W1761103986 cites W2019498815 @default.
- W1761103986 cites W2027986759 @default.
- W1761103986 cites W2037011629 @default.
- W1761103986 cites W2037965136 @default.
- W1761103986 cites W2039575199 @default.
- W1761103986 cites W2042574171 @default.
- W1761103986 cites W2044503966 @default.
- W1761103986 cites W2050400354 @default.
- W1761103986 cites W2051903196 @default.
- W1761103986 cites W2055433197 @default.
- W1761103986 cites W2057117782 @default.
- W1761103986 cites W2057459457 @default.
- W1761103986 cites W2061240327 @default.
- W1761103986 cites W2063261057 @default.
- W1761103986 cites W2064480843 @default.
- W1761103986 cites W2065308885 @default.
- W1761103986 cites W2075166100 @default.
- W1761103986 cites W2078315216 @default.
- W1761103986 cites W2083772019 @default.
- W1761103986 cites W2087337791 @default.
- W1761103986 cites W2087615914 @default.
- W1761103986 cites W2088257029 @default.
- W1761103986 cites W2093968338 @default.
- W1761103986 cites W2095822580 @default.
- W1761103986 cites W2098613108 @default.
- W1761103986 cites W2103441516 @default.
- W1761103986 cites W2105494575 @default.
- W1761103986 cites W2105934661 @default.
- W1761103986 cites W2105940436 @default.
- W1761103986 cites W2107579427 @default.
- W1761103986 cites W2110065044 @default.
- W1761103986 cites W2110784166 @default.
- W1761103986 cites W2117262957 @default.
- W1761103986 cites W2120662407 @default.
- W1761103986 cites W2123402141 @default.
- W1761103986 cites W2124192284 @default.
- W1761103986 cites W2127218421 @default.
- W1761103986 cites W2127738598 @default.
- W1761103986 cites W2129860818 @default.
- W1761103986 cites W2134255060 @default.
- W1761103986 cites W2136269072 @default.
- W1761103986 cites W2141409867 @default.
- W1761103986 cites W2144182447 @default.
- W1761103986 cites W2150398577 @default.
- W1761103986 cites W2153157120 @default.
- W1761103986 cites W2157202423 @default.
- W1761103986 cites W2159637520 @default.
- W1761103986 cites W2159782192 @default.
- W1761103986 cites W2161186998 @default.
- W1761103986 cites W2161565143 @default.
- W1761103986 cites W2162774438 @default.
- W1761103986 cites W2164210932 @default.
- W1761103986 cites W2166559705 @default.
- W1761103986 cites W2275274991 @default.
- W1761103986 cites W2307870120 @default.
- W1761103986 cites W2317360569 @default.