Matches in SemOpenAlex for { <https://semopenalex.org/work/W2280921641> ?p ?o ?g. }
- W2280921641 abstract "Data mining is the process of automatically discovering useful information in large data repositories. The development of data mining is motivated by the challenges posed by modern data sets, such as large size, high dimensionality and heterogeneity. This thesis proposes several novel data mining methods to discover change detection. The first problem considered is detecting anomalies in a given data set. Anomalies are those data points that are different from the remaining of the data set. In the thesis, a method is proposed to make use of domain knowledge provided by the user. Often, the data include a set of environmental attributes whose values a user would never consider to be directly indicative of an anomaly. However, such attributes cannot be ignored because they have a direct effect on the expected distribution of the result attributes whose values can indicate an anomalous observation. The method proposed in this thesis takes such differences among attributes into account. The second problem considered is detecting change of distribution in multi-dimensional data sets. For a given baseline data set and a set of newly observed data points, the proposed method defines a statistical test for deciding if the observed data points are sampled from the underlying distribution that produced the baseline data set. The method defines a test statistic that is strictly distribution-free under the null hypothesis. The experimental results show that the proposed test has substantially more power than existing methods for multi-dimensional change detection. The third problem considered is modeling the temporal change in prominence of data clusters. Existing work is based on developing a mixture model that treats the time information as one of the random variables, which causes the model to be sensitive to the distribution of time. The proposed method defines a Bayesian mixture model with a set of linear regression mixing proportions that are conditioned on the time. A Gibbs Sampler is used to derive the distributions of the random variables in the model." @default.
- W2280921641 created "2016-06-24" @default.
- W2280921641 creator A5002518742 @default.
- W2280921641 creator A5054653073 @default.
- W2280921641 creator A5077570468 @default.
- W2280921641 date "2008-01-01" @default.
- W2280921641 modified "2023-09-22" @default.
- W2280921641 title "Novel change detection techniques in multidimensional data mining" @default.
- W2280921641 cites W147860157 @default.
- W2280921641 cites W1486632395 @default.
- W2280921641 cites W1489950266 @default.
- W2280921641 cites W1499117135 @default.
- W2280921641 cites W1521478692 @default.
- W2280921641 cites W1543388142 @default.
- W2280921641 cites W1547326327 @default.
- W2280921641 cites W1549565124 @default.
- W2280921641 cites W1552339598 @default.
- W2280921641 cites W1554663460 @default.
- W2280921641 cites W1567331820 @default.
- W2280921641 cites W1575476631 @default.
- W2280921641 cites W1672197616 @default.
- W2280921641 cites W1673310716 @default.
- W2280921641 cites W1876967670 @default.
- W2280921641 cites W1880262756 @default.
- W2280921641 cites W1965995153 @default.
- W2280921641 cites W1971800772 @default.
- W2280921641 cites W1974534365 @default.
- W2280921641 cites W1977496278 @default.
- W2280921641 cites W1981796063 @default.
- W2280921641 cites W1995003166 @default.
- W2280921641 cites W1995945562 @default.
- W2280921641 cites W2000832852 @default.
- W2280921641 cites W2002151188 @default.
- W2280921641 cites W2002847183 @default.
- W2280921641 cites W2006761268 @default.
- W2280921641 cites W2009727399 @default.
- W2280921641 cites W2010657328 @default.
- W2280921641 cites W2015452422 @default.
- W2280921641 cites W2015487637 @default.
- W2280921641 cites W2017805816 @default.
- W2280921641 cites W2020999234 @default.
- W2280921641 cites W2022775778 @default.
- W2280921641 cites W2033139852 @default.
- W2280921641 cites W2035006576 @default.
- W2280921641 cites W2036358294 @default.
- W2280921641 cites W2038812321 @default.
- W2280921641 cites W2043553302 @default.
- W2280921641 cites W2045064676 @default.
- W2280921641 cites W2045948812 @default.
- W2280921641 cites W2049058890 @default.
- W2280921641 cites W2049633694 @default.
- W2280921641 cites W2058148593 @default.
- W2280921641 cites W2061122559 @default.
- W2280921641 cites W2061240327 @default.
- W2280921641 cites W2062137761 @default.
- W2280921641 cites W2065811242 @default.
- W2280921641 cites W2068714596 @default.
- W2280921641 cites W2069176735 @default.
- W2280921641 cites W2069429561 @default.
- W2280921641 cites W2072644219 @default.
- W2280921641 cites W2083772019 @default.
- W2280921641 cites W2085954109 @default.
- W2280921641 cites W2095345875 @default.
- W2280921641 cites W2095897464 @default.
- W2280921641 cites W2097089247 @default.
- W2280921641 cites W2102936290 @default.
- W2280921641 cites W2103448012 @default.
- W2280921641 cites W2104755048 @default.
- W2280921641 cites W2104809968 @default.
- W2280921641 cites W2110784166 @default.
- W2280921641 cites W2112210867 @default.
- W2280921641 cites W2114624736 @default.
- W2280921641 cites W2116946531 @default.
- W2280921641 cites W2120587290 @default.
- W2280921641 cites W2120636621 @default.
- W2280921641 cites W2126843316 @default.
- W2280921641 cites W2128420091 @default.
- W2280921641 cites W2129281431 @default.
- W2280921641 cites W2129905273 @default.
- W2280921641 cites W2131687179 @default.
- W2280921641 cites W2132001627 @default.
- W2280921641 cites W2132138475 @default.
- W2280921641 cites W2136393336 @default.
- W2280921641 cites W2136490963 @default.
- W2280921641 cites W2139224176 @default.
- W2280921641 cites W2139956879 @default.
- W2280921641 cites W2140151376 @default.
- W2280921641 cites W2143275903 @default.
- W2280921641 cites W2144182447 @default.
- W2280921641 cites W2150398577 @default.
- W2280921641 cites W2163288162 @default.
- W2280921641 cites W2165047624 @default.
- W2280921641 cites W2166681504 @default.
- W2280921641 cites W2170337404 @default.
- W2280921641 cites W2170936641 @default.
- W2280921641 cites W2171343266 @default.
- W2280921641 cites W2293546752 @default.
- W2280921641 cites W2796034401 @default.
- W2280921641 cites W3085162807 @default.
- W2280921641 cites W3487859 @default.