Search Results for author: Elin Farnell

Found 8 papers, 1 papers with code

Support vector machines and Radon's theorem

1 code implementation1 Nov 2020 Henry Adams, Elin Farnell, Brittany Story

A support vector machine (SVM) is an algorithm that finds a hyperplane which optimally separates labeled data points in $\mathbb{R}^n$ into positive and negative classes.

More chemical detection through less sampling: amplifying chemical signals in hyperspectral data cubes through compressive sensing

no code implementations27 Jun 2019 Henry Kvinge, Elin Farnell, Julia R. Dupuis, Michael Kirby, Chris Peterson, Elizabeth C. Schundler

In this paper we explore a phenomenon in which bandwise CS sampling of a hyperspectral data cube followed by reconstruction can actually result in amplification of chemical signals contained in the cube.

Compressive Sensing

A data-driven approach to sampling matrix selection for compressive sensing

no code implementations20 Jun 2019 Elin Farnell, Henry Kvinge, John P. Dixon, Julia R. Dupuis, Michael Kirby, Chris Peterson, Elizabeth C. Schundler, Christian W. Smith

We propose a method for defining an order for a sampling basis that is optimal with respect to capturing variance in data, thus allowing for meaningful sensing at any desired level of compression.

Compressive Sensing

Rare geometries: revealing rare categories via dimension-driven statistics

no code implementations29 Jan 2019 Henry Kvinge, Elin Farnell, Jingya Li, Yujia Chen

The first is a general lack of labeled examples of the rare class and the second is the potential non-separability of the rare class from the majority (in terms of available features).

Translation

Too many secants: a hierarchical approach to secant-based dimensionality reduction on large data sets

no code implementations5 Aug 2018 Henry Kvinge, Elin Farnell, Michael Kirby, Chris Peterson

Intuitively, the SAP algorithm seeks to determine a projection which best preserves the lengths of all secants between points in a data set; by applying the algorithm to find the best projections to vector spaces of various dimensions, one may infer the dimension of the manifold of origination.

Dimensionality Reduction

A GPU-Oriented Algorithm Design for Secant-Based Dimensionality Reduction

no code implementations10 Jul 2018 Henry Kvinge, Elin Farnell, Michael Kirby, Chris Peterson

Dimensionality-reduction techniques are a fundamental tool for extracting useful information from high-dimensional data sets.

Dimensionality Reduction

Endmember Extraction on the Grassmannian

no code implementations3 Jul 2018 Elin Farnell, Henry Kvinge, Michael Kirby, Chris Peterson

Endmember extraction plays a prominent role in a variety of data analysis problems as endmembers often correspond to data representing the purest or best representative of some feature.

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