語系:
繁體中文
English
說明(常見問題)
回圖書館首頁
手機版館藏查詢
登入
回首頁
切換:
標籤
|
MARC模式
|
ISBD
FindBook
Google Book
Amazon
博客來
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack.
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack./
作者:
Gupta, Kishor Datta.
出版者:
Ann Arbor : ProQuest Dissertations & Theses, : 2021,
面頁冊數:
169 p.
附註:
Source: Dissertations Abstracts International, Volume: 83-02, Section: B.
Contained By:
Dissertations Abstracts International83-02B.
標題:
Computer science. -
電子資源:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=28650214
ISBN:
9798535510415
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack.
Gupta, Kishor Datta.
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack.
- Ann Arbor : ProQuest Dissertations & Theses, 2021 - 169 p.
Source: Dissertations Abstracts International, Volume: 83-02, Section: B.
Thesis (Ph.D.)--The University of Memphis, 2021.
This item must not be sold to any third party vendors.
Defenses against adversarial attacks are essential to ensure the reliability of machine learning models as their applications are expanding in different domains. Existing ML defense techniques have several limitations in practical use. I proposed a trustworthy framework that employs an adaptive strategy to inspect both inputs and decisions. In particular, data streams are examined by a series of diverse filters before sending to the learning system and then crossed checked its output through a diverse set of filters before making the final decision. My experimental results illustrated that the proposed active learning-based defense strategy could mitigate adaptive or advanced adversarial manipulations both in input and after with the model decision for a wide range of ML attacks by higher accuracy. Moreover, the output decision boundary inspection using a classification technique automatically reaffirms the reliability and increases the trustworthiness of any ML-Based decision support system. Unlike other defense strategies, my defense technique does not require adversarial sample generation, and updating the decision boundary for detection makes the defense systems robust to traditional adaptive attacks.
ISBN: 9798535510415Subjects--Topical Terms:
523869
Computer science.
Subjects--Index Terms:
Adversarial machine learning
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack.
LDR
:02417nmm a2200385 4500
001
2347646
005
20220823142321.5
008
241004s2021 ||||||||||||||||| ||eng d
020
$a
9798535510415
035
$a
(MiAaPQ)AAI28650214
035
$a
AAI28650214
040
$a
MiAaPQ
$c
MiAaPQ
100
1
$a
Gupta, Kishor Datta.
$3
3344221
245
1 0
$a
Robust Filtering Schemes for Machine Learning Systems to Defend Adversarial Attack.
260
1
$a
Ann Arbor :
$b
ProQuest Dissertations & Theses,
$c
2021
300
$a
169 p.
500
$a
Source: Dissertations Abstracts International, Volume: 83-02, Section: B.
500
$a
Advisor: Dasgupta, Dipankar.
502
$a
Thesis (Ph.D.)--The University of Memphis, 2021.
506
$a
This item must not be sold to any third party vendors.
520
$a
Defenses against adversarial attacks are essential to ensure the reliability of machine learning models as their applications are expanding in different domains. Existing ML defense techniques have several limitations in practical use. I proposed a trustworthy framework that employs an adaptive strategy to inspect both inputs and decisions. In particular, data streams are examined by a series of diverse filters before sending to the learning system and then crossed checked its output through a diverse set of filters before making the final decision. My experimental results illustrated that the proposed active learning-based defense strategy could mitigate adaptive or advanced adversarial manipulations both in input and after with the model decision for a wide range of ML attacks by higher accuracy. Moreover, the output decision boundary inspection using a classification technique automatically reaffirms the reliability and increases the trustworthiness of any ML-Based decision support system. Unlike other defense strategies, my defense technique does not require adversarial sample generation, and updating the decision boundary for detection makes the defense systems robust to traditional adaptive attacks.
590
$a
School code: 1194.
650
4
$a
Computer science.
$3
523869
650
4
$a
Computer engineering.
$3
621879
650
4
$a
Applied mathematics.
$3
2122814
650
4
$a
Artificial intelligence.
$3
516317
650
4
$a
Information technology.
$3
532993
650
4
$a
Information science.
$3
554358
650
4
$a
Datasets.
$3
3541416
650
4
$a
Genetic algorithms.
$3
533907
650
4
$a
Neural networks.
$3
677449
650
4
$a
Noise.
$3
598816
653
$a
Adversarial machine learning
653
$a
Bio-inspired algorithm
653
$a
Negative selection
690
$a
0984
690
$a
0489
690
$a
0464
690
$a
0800
690
$a
0723
690
$a
0364
710
2
$a
The University of Memphis.
$b
Computer Science.
$3
2104090
773
0
$t
Dissertations Abstracts International
$g
83-02B.
790
$a
1194
791
$a
Ph.D.
792
$a
2021
793
$a
English
856
4 0
$u
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=28650214
筆 0 讀者評論
館藏地:
全部
電子資源
出版年:
卷號:
館藏
1 筆 • 頁數 1 •
1
條碼號
典藏地名稱
館藏流通類別
資料類型
索書號
使用類型
借閱狀態
預約狀態
備註欄
附件
W9470084
電子資源
11.線上閱覽_V
電子書
EB
一般使用(Normal)
在架
0
1 筆 • 頁數 1 •
1
多媒體
評論
新增評論
分享你的心得
Export
取書館
處理中
...
變更密碼
登入