学術論文誌(査読付)
article
Explanation vs Performance in Data Mining: A Case Study with Predicting Runaway Projects
概要

Often, the explanatory power of a learned model must be traded off against model performance. In the case of predicting runaway software projects, we show that the twin goals of high performance and good explanatory power are achievable after applying a variety of data mining techniques (discrimination, feature subset selection, rule covering algorithms). This result is a new high water mark in predicting runaway projects. Measured in terms of precision, this new model is as good as can be expected for our data. Other methods might out-perform our result (e.g. by generating a smaller, more explainable model) but no other method could out-perform the precision of our learned model.
ファイル

ファイルがありません
BibTeX

Copyright © 2025 omzn.aquatan.net a.k.a. Osamu Mizuno All rights reserved.

ここのリストで表示される文献は,SEL@KIT在籍者に関連するもののみになります.