HIRSCH, Laurence and BRUNSDON, Teresa (2018). A comparison of Lucene search queries evolved as text classifiers. Applied Artificial Intelligence, 32 (7-8), 768-784. [Article]
Documents
22330:514391
PDF
SearchQueryClassificationHirschBrunsdon.pdf - Accepted Version
Available under License All rights reserved.
SearchQueryClassificationHirschBrunsdon.pdf - Accepted Version
Available under License All rights reserved.
Download (764kB) | Preview
Abstract
In this article, we use a genetic algorithm to evolve seven
different types of Lucene search query with the objective of
generating accurate and readable text classifiers. We compare
the effectiveness of each of the different types of query using
three commonly used text datasets. We vary the number of
words available for classification and compare results for 4, 8,
and 16 words per category. The generated queries can also be
viewed as labels for the categories and there is a benefit to a
human analyst in being able to read and tune the classifier.
The evolved queries also provide an explanation of the classification
process. We consider the consistency of the classifiers
and compare their performance on categories of different
complexities. Finally, various approaches to the analysis of
the results are briefly explored.
More Information
Statistics
Downloads
Downloads per month over past year
Metrics
Altmetric Badge
Dimensions Badge
Share
Actions (login required)
View Item |