4,609,267 research outputs found
Investigating Retrieval Method Selection with Axiomatic Features
We consider algorithm selection in the context of ad-hoc information retrieval. Given a query and a pair of retrieval methods, we propose a meta-learner that predicts how to combine the methods' relevance scores into an overall relevance score. Inspired by neural models' different properties with regard to IR axioms, these predictions are based on features that quantify axiom-related properties of the query and its top ranked documents. We conduct an evaluation on TREC Web Track data and find that the meta-learner often significantly improves over the individual methods. Finally, we conduct feature and query weight analyses to investigate the meta-learner's behavior
A precise method for visualizing dispersive features in image plots
In order to improve the advantages and the reliability of the second
derivative method in tracking the position of extrema from experimental curves,
we develop a novel analysis method based on the mathematical concept of
curvature. We derive the formulas for the curvature in one and two dimensions
and demonstrate their applicability to simulated and experimental
angle-resolved photoemission spectroscopy data. As compared to the second
derivative, our new method improves the localization of the extrema and reduces
the peak broadness for a better visualization on intensity image plots.Comment: 7 pages, 4 figures. Copyright 2011 American Institute of Physics.
This article may be downloaded for personal use only. Any other use requires
prior permission of the author and the American Institute of Physics. The
following article appeared in Review of Scientific Instruments and may be
found at http://link.aip.org/link/doi/10.1063/1.358511
Anomalous pattern based clustering of mental tasks with subject independent learning – some preliminary results
In this paper we describe a new method for EEG signal classification in which the classification of one subject’s EEG signals is based on features learnt from another subject. This method applies to the power spectrum density data and assigns class-dependent information weights to individual features. The informative features appear to be rather similar among different subjects, thus supporting the view that there are subject independent general brain patterns for the same mental task. Classification is done via clustering using the intelligent k-means algorithm with the most informative features from a different subject. We experimentally compare our method with others.</jats:p
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