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KDD
2009
ACM

Genre-based decomposition of email class noise

14 years 5 months ago
Genre-based decomposition of email class noise
Corruption of data by class-label noise is an important practical concern impacting many classification problems. Studies of data cleaning techniques often assume a uniform label noise model, however, which is seldom realized in practice. Relatively little is understood, as to how the natural label noise distribution can be measured or simulated. Using email spam-filtering data, we demonstrate that class noise can have substantial content specific bias. We also demonstrate that noise detection techniques based on classifier confidence tend to identify instances that human assessors are likely to label in error. We show that genre modeling can be very informative in identifying potential areas of mislabeling. Moreover, we are able to show that genre decomposition can also be used to substantially improve spam filtering accuracy, with our results outperforming the best published figures for the trec05-p1 and ceas-2008 benchmark collections.
Aleksander Kolcz, Gordon V. Cormack
Added 25 Nov 2009
Updated 25 Nov 2009
Type Conference
Year 2009
Where KDD
Authors Aleksander Kolcz, Gordon V. Cormack
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