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Foster Provost

Researcher at New York University

Publications -  217
Citations -  22905

Foster Provost is an academic researcher from New York University. The author has contributed to research in topics: Knowledge extraction & Statistical relational learning. The author has an hindex of 65, co-authored 215 publications receiving 21297 citations. Previous affiliations of Foster Provost include University of Antwerp & University of Pittsburgh.

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Proceedings ArticleDOI

Get another label? improving data quality and data mining using multiple, noisy labelers

TL;DR: The results show clearly that when labeling is not perfect, selective acquisition of multiple labels is a strategy that data miners should have in their repertoire; for certain label-quality/cost regimes, the benefit is substantial.
Proceedings Article

The Case against Accuracy Estimation for Comparing Induction Algorithms

TL;DR: This work describes and demonstrates what it believes to be the proper use of ROC analysis for comparative studies in machine learning research, and argues that this methodology is preferable both for making practical choices and for drawing conclusions.
Journal ArticleDOI

Robust Classification for Imprecise Environments

TL;DR: It is shown that it is possible to build a hybrid classifier that will perform at least as well as the best available classifier for any target conditions, and in some cases, the performance of the hybrid actually can surpass that of the best known classifier.
Posted Content

Robust Classification for Imprecise Environments

TL;DR: The ROC convex hull (ROCCH) method as mentioned in this paper combines techniques from ROC analysis, decision analysis and computational geometry, and adapts them to the particulars of analyzing learned classifiers.
Journal ArticleDOI

Data science and its relationship to big data and data-driven decision making

TL;DR: It is argued that there are good reasons why it has been hard to pin down exactly what is data science, and that to serve business effectively, it is important to understand its relationships to other important related concepts, and to begin to identify the fundamental principles underlying data science.