Title of article :
Efficient classification of multi-labeled text streams by clashing
Author/Authors :
رanculef، نويسنده , , Ricardo and Flaounas، نويسنده , , Ilias and Cristianini، نويسنده , , Nello، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
20
From page :
5431
To page :
5450
Abstract :
We present a method for the classification of multi-labeled text documents explicitly designed for data stream applications that require to process a virtually infinite sequence of data using constant memory and constant processing time. thod is composed of an online procedure used to efficiently map text into a low-dimensional feature space and a partition of this space into a set of regions for which the system extracts and keeps statistics used to predict multi-label text annotations. Documents are fed into the system as a sequence of words, mapped to a region of the partition, and annotated using the statistics computed from the labeled instances colliding in the same region. This approach is referred to as clashing. ustrate the method in real-world text data, comparing the results with those obtained using other text classifiers. In addition, we provide an analysis about the effect of the representation space dimensionality on the predictive performance of the system. Our results show that the online embedding indeed approximates the geometry of the full corpus-wise TF and TF-IDF space. The model obtains competitive F measures with respect to the most accurate methods, using significantly fewer computational resources. In addition, the method achieves a higher macro-averaged F measure than methods with similar running time. Furthermore, the system is able to learn faster than the other methods from partially labeled streams.
Keywords :
Text classification , Multi-label classification , data streams , Massive data mining , Feature hashing
Journal title :
Expert Systems with Applications
Serial Year :
2014
Journal title :
Expert Systems with Applications
Record number :
2354939
Link To Document :
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