File:USING FISHER INFORMATION TO CREATE SELF-REFLECTION IN AUTONOMOUS SYSTEMS (IA usingfisherinfor1094562259).pdf

From Wikimedia Commons, the free media repository
Jump to navigation Jump to search
Go to page
next page →
next page →
next page →

Original file(1,275 × 1,650 pixels, file size: 4.31 MB, MIME type: application/pdf, 80 pages)

Captions

Captions

Add a one-line explanation of what this file represents

Summary[edit]

USING FISHER INFORMATION TO CREATE SELF-REFLECTION IN AUTONOMOUS SYSTEMS   (Wikidata search (Cirrus search) Wikidata query (SPARQL)  Create new Wikidata item based on this file)
Author
Ji, Junghoon
Title
USING FISHER INFORMATION TO CREATE SELF-REFLECTION IN AUTONOMOUS SYSTEMS
Publisher
Monterey, CA; Naval Postgraduate School
Description

In modern society, the number and popularity of autonomous systems are increasing, and it seems certain that their importance will grow in the future. As early as 2017, Amazon was already working with more than 100,000 warehouse robots, and many companies have begun shipping with drones or autonomous vehicles around the world. In the future, autonomous systems are likely to play a major role not only in the public sector but also in the defense sector. In fact, the Republic of Korea Army introduced a \"drone-bot\" force in 2018, for defense applications. Nevertheless, the operation of autonomous systems poses several challenges. One is deciding how the autonomous system will make decisions in an uncertain situation. What if the collected data is scarce, contains extreme values, and follows an unknown distribution? In light of these uncertainties, a robust estimation method is needed. Autonomous systems should make judgments that lead to decisions that not only yield the good results but also, more importantly, avoid catastrophic outcomes. In this thesis, we present two fast and conservative estimation methods using Fisher information that adapt to the quality and quantity of the data. We compare our two methods with parametric estimates and maximum likelihood estimation under normal, log-normal, and exponential distributions. Finally, we apply the two methods to predict whether an unmanned underwater vehicle can successfully perform a mission.


Subjects: Fisher information; epi-spline; maximum likelihood estimation; robust PDF
Language English
Publication date March 2019
Current location
IA Collections: navalpostgraduateschoollibrary; fedlink
Accession number
usingfisherinfor1094562259
Source
Internet Archive identifier: usingfisherinfor1094562259
https://archive.org/download/usingfisherinfor1094562259/usingfisherinfor1094562259.pdf
Permission
(Reusing this file)
Copyright is reserved by the copyright owner.

Licensing[edit]

Public domain
This work is in the public domain in the United States because it is a work prepared by an officer or employee of the United States Government as part of that person’s official duties under the terms of Title 17, Chapter 1, Section 105 of the US Code. Note: This only applies to original works of the Federal Government and not to the work of any individual U.S. state, territory, commonwealth, county, municipality, or any other subdivision. This template also does not apply to postage stamp designs published by the United States Postal Service since 1978. (See § 313.6(C)(1) of Compendium of U.S. Copyright Office Practices). It also does not apply to certain US coins; see The US Mint Terms of Use.

File history

Click on a date/time to view the file as it appeared at that time.

Date/TimeThumbnailDimensionsUserComment
current19:54, 25 July 2020Thumbnail for version as of 19:54, 25 July 20201,275 × 1,650, 80 pages (4.31 MB) (talk | contribs)FEDLINK - United States Federal Collection usingfisherinfor1094562259 (User talk:Fæ/IA books#Fork8) (batch 1993-2020 #31641)

Metadata