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Detecting Distance-Based Outliers in Streams of Data

Detecting Distance-Based Outliers in Streams of Data. Fabrizio Angiulli and Fabio Fassetti DEIS, Universit `a della Calabria CIKM 07. Introduction(1). Application Fraud detection, network flow monitoring, telecommunications, data management

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Detecting Distance-Based Outliers in Streams of Data

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  1. Detecting Distance-Based Outliers in Streams of Data Fabrizio Angiulli and Fabio Fassetti DEIS, Universit `a della Calabria CIKM 07

  2. Introduction(1) • Application • Fraud detection, network flow monitoring, telecommunications, data management • Store all incoming objects: unnecessary or impractical • Find the most exceptional objects in the stream of data • Data stream • A large volume of data coming as an unbounded sequence • Older data objects are less significant than more recent ones, and thus should contributes less. • Data mining on evolving data streams is often performed based on certain time intervals.(window) • Landmark windows: some time points are identified in the data stream and analysis are performed only for the stream portion which falls between the last landmark and the current time. • Sliding windows: The window is identified by two sliding endpoints. [t-W+1, t]

  3. Introduction(2) • Distance-based outliers • Given parameters k and R, an object is a distance-based outlier if less than k objects in the input data set lie within distance R from it. • Two algorithm • Answers outlier queries at any time, but has larger space requirements • Derived from the above one, but has limited memory requirements and returns approximate answer based on highly accurate estimations with a statistical guarantee. • The approach proposed introduces a novel concept of querying for ouliers. • Specifically, previous work deals with continuous queries, that are queries evaluated continuously as data stream objects arrive; • Conversely, it, deal with one-time query, that are queries evaluated once over a point-in-time.

  4. Novel task:Outlier detection on windows at query time. • Due to stream evolution, object properties can change over time and, hence, evaluating an object for outlierness when it arrives, although meaningful, can be reductive in some contexts and some misleading. • On the contrary, by classifying single objects when a data analysis is required, data concept drift typical of streams can be captured. • To this aim, it is needed to support queries at arbitrary points-in-time, called query times, which classify the whole population in the current window instead of the single incoming data stream object. • This is the first work performing outlier detection on windows at query time.

  5. An example – How concept drift can affect the outlierness of data stream objects.

  6. Problem Definition • Definition 3.1 (Distance-Based Outlier).Let S be a set of objects, obj, an object of S, k a positive integer, and R a positive real number. Then, obj is a distance-based outlier (or, simply, an outlier) if less than k objectsin S lie within distance R from obj. • Given a window size W, the current window is the window DS[t-W+1, t], where t is the time of arrival of the last observed data stream object. • The neighbors of an object obj that precede obj in the stream and belong to the current window arecalled preceding neighbors of obj. • The neighbors of an object obj that follow obj in the stream and belongto the current window are called succeeding neighbors of obj.

  7. Problem Definition • Definition 3.2 (Data Stream Outlier Query).Given a data stream DS, a window size W, and fixed parameters R and k, the Data Stream Outlier Query is: return the distance based outliers in the current window. • An inlier is an object obj having at least k neighbors in the current window • If the number of succeeding neighbors of obj isless than k, obj could become an outlierdepending on thestream evolution. • Conversely, since obj will expire beforeits succeeding neighbors, inliers having at least k succeeding neighbors will be inliers for any stream evolution. Suchinliers are called safe inliers.

  8. Example-Evolution of a 1-d data stream

  9. Algorithm(STORM) • STream OutlieR Miner • Exact one • Exactly answer outlier queries at any time • If the entire window can be allocated in memory, the exact answer of the data stream outlier query can be computed. • Approximate one • Interesting windows are often so large that they do not fit in memory. • These approximations guarantee highly accurate answers with limited memory requirements.

  10. Exact Algorithm • Consists of two procedures • Stream Manager • Receiving the incoming data stream objects and efficiently updates a suitable data structure (ISB). • Query Manager • Exploit the data structure to effectively answer queries

  11. Information of ISB • ISB (Indexed Stream Buffer) • A summary of the current window, storing nodes • Each node is associated with a different data stream object. • n.obj : a data stream object. • n.id: the identifier of n:obj, that is the arrival time ofn:obj. • n.count after : the number of succeeding neighbors ofn.obj. This field is exploited to recognize safe inliers. • n.nn_before: a list, having size at most k, containingthe identifiers of the most recent preceding neighborsof n.obj. At query time, this list is exploited to recognize the number of preceding neighbors of n.obj. • ISB provides a method range_query search,that, given an object obj and a real number R, returns the nodes in ISB associated with objects whose distance from obj is not greater that R.

  12. Exact algorithm

  13. Approximate Algorithm(1) • Exact algorithm requires to store all the window objects • If the window is so huge that does not fit in memory, or only limited memory can be allocated, the exact algorithm could be not employed. • Two approximates • Strategy 1 • Despite safe inliers cannot be returned by any future outlier query, they have to kept in ISB in order to correctly recognize outiers, since they may be preceding neighbors of future incoming objects. • However, it is sufficient to retain in ISB only a fraction of (p, 0<=p<=1) safe inliers to guarantee an highly accurate answer to the outlier query. • If the total number of safe inliers into ISB exceeds pW, then a randomly selected object of ISB is removed • The random selection policy guarantees that safe inliers surviving into ISB are uniformaly distributed.

  14. Approximate Algorithm(2) • Strategy 2 • Avoid storing the list of the k most recent preceding neighbors by storing in each node n • Just the fraction n.fract_before of previous neighbors of n.obj observed in ISB at the arrival time n.id of the object n.obj. • At query time, the number of neighbors of n.obj has to be evaluated. Since only the fraction n.fract_before is stored, the number of preceding neighbors of n.obj in the whole at the current has to be estimated. • Let a be the number of preceding neighbors of n.obj at the arrival time of n.obj. Assuming that they are uniformly distributed along the window, the number of preceding neighbors of n.obj at the query time t can be estimated as • Note that n.fract_before does not give directly the value a, since it is comupted by considering only the objects stored in ISB, thus, it does not take into account removed safe inliers preceding neighbors of n.obj. However, a can be safely estimated as

  15. Approximate Algorithm

  16. Experimental Results • Gauss data • Synthetically generated time sequence of 35,000 one dimensional observations. • Consist of a mixture of three Gaussian distributions with uniform noise. • Pacific Marine Environmental Dataset • Consist of temporal series collected in the context of the Tropical Atmosphere Ocean project • Consider both a one and a three dimensional data stream. • Rain data set consists of 42.961 rain measurements. • TAO data set consists of 37, 841 terns (SST, RH, Prec) • 1998 DARPA Instrusion Detection Evaluation Data • Consists of network connection records of several intrusions • 5000 TCP connection records with 23 numerical features. • Parameters • W = 10, 000, k = 50, • R = 0.1 for Gauss, R= 0.5 for Rain, R = 1 for TAO and R = 1,000 fro DARPA

  17. Precision and Recall of approx-STORM

  18. Conclusion • The novel task of data stream outlier query is introduced. • An exact algorithm to efficiently detect distance-based outliers in the introduced model is presented. • An approximate algorithm is derived from the exact one, based on a trade off between spatial requirements and answer accuracy. • By means of experiments on both real and synthetic datasets, the efficiency and the accuracy of the proposed techniques are shown.

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