• Skip to main content
  • Skip to secondary menu
  • Skip to primary sidebar
  • Home
  • Contact Us

iHash

News and How to's

  • The 2023 Travel Hacker Bundle ft. Rosetta Stone Lifetime Subscription for $199

    The 2023 Travel Hacker Bundle ft. Rosetta Stone Lifetime Subscription for $199
  • Apple iPad Air 2, 16GB – Silver (Refurbished: Wi-Fi Only) for $106

    Apple iPad Air 2, 16GB – Silver (Refurbished: Wi-Fi Only) for $106
  • S300 eufyCam (eufyCam 3C) 3-Cam Kit for $579

    S300 eufyCam (eufyCam 3C) 3-Cam Kit for $579
  • eufy Baby Monitor 2 (2K, Smart, Wi-Fi) for $119

    eufy Baby Monitor 2 (2K, Smart, Wi-Fi) for $119
  • eufy SpaceView Add-On Video Baby Monitor for $99

    eufy SpaceView Add-On Video Baby Monitor for $99
  • News
    • Rumor
    • Design
    • Concept
    • WWDC
    • Security
    • BigData
  • Apps
    • Free Apps
    • OS X
    • iOS
    • iTunes
      • Music
      • Movie
      • Books
  • How to
    • OS X
      • OS X Mavericks
      • OS X Yosemite
      • Where Download OS X 10.9 Mavericks
    • iOS
      • iOS 7
      • iOS 8
      • iPhone Firmware
      • iPad Firmware
      • iPod touch
      • AppleTV Firmware
      • Where Download iOS 7 Beta
      • Jailbreak News
      • iOS 8 Beta/GM Download Links (mega links) and How to Upgrade
      • iPhone Recovery Mode
      • iPhone DFU Mode
      • How to Upgrade iOS 6 to iOS 7
      • How To Downgrade From iOS 7 Beta to iOS 6
    • Other
      • Disable Apple Remote Control
      • Pair Apple Remote Control
      • Unpair Apple Remote Control
  • Special Offers
  • Contact us

Chung-Ang University Researchers Develop Algorithm for Optimal Decision Making under Heavy-tailed Noisy Rewards

Nov 26, 2022 by iHash Leave a Comment

Researchers propose methods that theoretically guarantee minimal loss for worst case scenarios with minimal prior information for heavy-tailed reward distributions

The exploration algorithms for stochastic multi-armed bandits (MABs)–sequential decision-making problems under uncertain environments–typically assume light-tailed distributions for reward noises. However, real-world datasets often show heavy-tailed noise. In light of this, researchers from Korea propose an algorithm that can achieve minimax optimality (minimum loss under maximum loss scenario) with minimal prior information. Superior to existing algorithms, the new algorithm has potential applications in autonomous trading and personalized recommendation systems.

In data science, researchers typically deal with data that contain noisy observations. An important problem explored by data scientists in this context is the problem of sequential decision making. This is commonly known as a “stochastic multi-armed bandit”(stochastic MAB). Here, an intelligent agent sequentially explores and selects actions based on noisy rewards under an uncertain environment. Its goal is to minimize the cumulative regret–the difference between the maximum reward and the expected reward of selected actions. A smaller regret implies a more efficient decision making.

Most existing studies on stochastic MABs have performed regret analysis under the assumption that the reward noise follows a light-tailed distribution. However, many real-world datasets, in fact, show a heavy-tailed noise distribution. These include user behavioral pattern data used for developing personalized recommendation systems, stock price data for automatic transaction development, and sensor data for autonomous driving.

In a recent study, Assistant Professor Kyungjae Lee of Chung-Ang University and Assistant Professor Sungbin Lim of the Ulsan Institute of Science and Technology, both in Korea, addressed this issue. In their theoretical analysis, they proved that the existing algorithms for stochastic MABs were sub-optimal for heavy-tailed rewards. More specifically, the methods employed in these algorithms–robust upper confidence bound (UCB) and adaptively perturbed exploration (APE) with unbounded perturbation–do not guarantee a minimax (minimization of maximum possible loss) optimality.

“Based on this analysis, minimax optimal robust (MR) UCB and APE methods have been proposed. MR-UCB utilizes a tighter confidence bound of robust mean estimators, and MR-APE is its randomized version. It employs bounded perturbation whose scale follows the modified confidence bound in MR-UCB,” explains Dr. Lee, speaking of their work, which was published in the IEEE Transactions on Neural Networks and Learning Systems on 14 September 2022.

The researchers next derived gap-dependent and independent upper bounds of the cumulative regret. For both the proposed methods, the latter value matches the lower bound under the heavy-tailed noise assumption, thereby achieving minimax optimality. Further, the new methods require minimal prior information and depend only on the maximum order of the bounded moment of rewards. In contrast, the existing algorithms require the upper bound of this moment a priori–information that may not be accessible in many real-world problems.

Having established their theoretical framework, the researchers tested their methods by performing simulations under Pareto and Fréchet noises. They found that MR-UCB consistently outperformed other exploration methods and was more robust with an increase in the number of actions under heavy-tailed noise.

Further, the duo verified their approach for real-world data using a cryptocurrency dataset, showing that MR-UCB and MR-APE were beneficial–minimax optimal regret bounds and minimal prior knowledge–in tackling heavy-tailed synthetic and real-world stochastic MAB problems.

“Being vulnerable to heavy-tailed noise, the existing MAB algorithms show poor performance in modeling stock data. They fail to predict big hikes or sudden drops in stock prices, causing huge losses. In contrast, MR-APE can be used in autonomous trading systems with stable expected returns through stock investment,” comments Dr. Lee, discussing the potential applications of the present work. “Additionally, it can be applied to personalized recommendation systems since behavioral data shows heavy-tailed noise. With better predictions of individual behavior, it is possible to provide better recommendations than conventional methods, which can maximize the advertising revenue,” he concludes.

Sign up for the free insideBIGDATA newsletter.

Join us on Twitter: https://twitter.com/InsideBigData1

Join us on LinkedIn: https://www.linkedin.com/company/insidebigdata/

Join us on Facebook: https://www.facebook.com/insideBIGDATANOW

Source link

Share this:

  • Facebook
  • Twitter
  • Pinterest
  • LinkedIn

Filed Under: BigData

Special Offers

  • The 2023 Travel Hacker Bundle ft. Rosetta Stone Lifetime Subscription for $199

    The 2023 Travel Hacker Bundle ft. Rosetta Stone Lifetime Subscription for $199
  • Apple iPad Air 2, 16GB – Silver (Refurbished: Wi-Fi Only) for $106

    Apple iPad Air 2, 16GB – Silver (Refurbished: Wi-Fi Only) for $106
  • S300 eufyCam (eufyCam 3C) 3-Cam Kit for $579

    S300 eufyCam (eufyCam 3C) 3-Cam Kit for $579
  • eufy Baby Monitor 2 (2K, Smart, Wi-Fi) for $119

    eufy Baby Monitor 2 (2K, Smart, Wi-Fi) for $119
  • eufy SpaceView Add-On Video Baby Monitor for $99

    eufy SpaceView Add-On Video Baby Monitor for $99

Reader Interactions

Leave a Reply Cancel reply

This site uses Akismet to reduce spam. Learn how your comment data is processed.

Primary Sidebar

  • Facebook
  • GitHub
  • Instagram
  • Pinterest
  • Twitter
  • YouTube

More to See

@insideBIGDATApodcast: ChatGPT – The Human AI Partnership

Jan 29, 2023 By iHash

Gootkit Malware Continues to Evolve with New Components and Obfuscations

Jan 29, 2023 By iHash

Tags

* Apple Cisco computer security cyber attacks cyber crime cyber news cybersecurity Cyber Security cyber security news cyber security news today cyber security updates cyber threats cyber updates data breach data breaches google hacker hacker news Hackers hacking hacking news how to hack incident response information security iOS 7 iOS 8 iPhone Malware microsoft network security ransomware ransomware malware risk management Secure security security breaches security vulnerabilities software vulnerability the hacker news Threat update video Vulnerabilities web applications

Latest

The 2023 Travel Hacker Bundle ft. Rosetta Stone Lifetime Subscription for $199

Expires January 30, 2024 23:59 PST Buy now and get 94% off Rosetta Stone: Lifetime Subscription (All Languages) KEY FEATURES The benefits of learning to speak a second language (or third) are immeasurable! With its intuitive, immersive training method, Rosetta Stone will have you reading, writing, and speaking new languages like a natural in no […]

Apple iPad Air 2, 16GB – Silver (Refurbished: Wi-Fi Only) for $106

Expires July 11, 2120 23:59 PST Buy now and get 40% off KEY FEATURES The iPad Air 2 boasts 40% faster CPU performance and 2.5 times the graphics performance when compared to its predecessor. Its 9.7″ LED-backlit Retina IPS LCD with a resolution of 2048×1536 provides richer colors, greater contrast, and sharper images for a […]

S300 eufyCam (eufyCam 3C) 3-Cam Kit for $579

Expires January 03, 2123 19:28 PST Buy now and get 0% off KEY FEATURES See 4K Detail Day and Night 180-Day Battery Life Up to 16 TB Expandable Local Storage (Additional Storage Drive Not Included) BionicMind AI Differentiates Family and Strangers HomeBase 3 Centralize Security Management PRODUCT SPECS Resolution 4K (3840×2160)° Night Vision Infrared & […]

eufy SpaceView Add-On Video Baby Monitor for $99

Expires January 28, 2123 06:33 PST Buy now and get 0% off Sweet Dreams on the Big Screen: The large 5″ 720p video baby monitor display shows a sharp picture with 10 times more detail than ordinary 240p-display baby monitors. Long-Lasting Views: Watch your baby for up to 15 hours per chargeplenty of time to […]

ISC Releases Security Patches for New BIND DNS Software Vulnerabilities

Jan 28, 2023Ravie LakshmananServer Security / DNS The Internet Systems Consortium (ISC) has released patches to address multiple security vulnerabilities in the Berkeley Internet Name Domain (BIND) 9 Domain Name System (DNS) software suite that could lead to a denial-of-service (DoS) condition. “A remote attacker could exploit these vulnerabilities to potentially cause denial-of-service conditions and […]

eufy Solo IndoorCam C24 (2K, 2-Cam Kit, Plug-in) for $75

Expires January 04, 2123 21:34 PST Buy now and get 0% off KEY FEATURES Knows Whos There: The on-device AI instantly determines whether a human or pet is present within the cameras view. The Key is in the Detail: View every event in up to 2K clarity (1080P while using HomeKit) so you see exactly […]

Jailbreak

Pangu Releases Updated Jailbreak of iOS 9 Pangu9 v1.2.0

Pangu has updated its jailbreak utility for iOS 9.0 to 9.0.2 with a fix for the manage storage bug and the latest version of Cydia. Change log V1.2.0 (2015-10-27) 1. Bundle latest Cydia with new Patcyh which fixed failure to open url scheme in MobileSafari 2. Fixed the bug that “preferences -> Storage&iCloud Usage -> […]

Apple Blocks Pangu Jailbreak Exploits With Release of iOS 9.1

Apple has blocked exploits used by the Pangu Jailbreak with the release of iOS 9.1. Pangu was able to jailbreak iOS 9.0 to 9.0.2; however, in Apple’s document on the security content of iOS 9.1, PanguTeam is credited with discovering two vulnerabilities that have been patched.

Pangu Releases Updated Jailbreak of iOS 9 Pangu9 v1.1.0

  Pangu has released an update to its jailbreak utility for iOS 9 that improves its reliability and success rate.   Change log V1.1.0 (2015-10-21) 1. Improve the success rate and reliability of jailbreak program for 64bit devices 2. Optimize backup process and improve jailbreak speed, and fix an issue that leads to fail to […]

Activator 1.9.6 Released With Support for iOS 9, 3D Touch

  Ryan Petrich has released Activator 1.9.6, an update to the centralized gesture, button, and shortcut manager, that brings support for iOS 9 and 3D Touch.

Copyright iHash.eu © 2023
We use cookies on this website. By using this site, you agree that we may store and access cookies on your device. Accept Read More
Privacy & Cookies Policy

Privacy Overview

This website uses cookies to improve your experience while you navigate through the website. Out of these, the cookies that are categorized as necessary are stored on your browser as they are essential for the working of basic functionalities of the website. We also use third-party cookies that help us analyze and understand how you use this website. These cookies will be stored in your browser only with your consent. You also have the option to opt-out of these cookies. But opting out of some of these cookies may affect your browsing experience.
Necessary
Always Enabled
Necessary cookies are absolutely essential for the website to function properly. This category only includes cookies that ensures basic functionalities and security features of the website. These cookies do not store any personal information.
Non-necessary
Any cookies that may not be particularly necessary for the website to function and is used specifically to collect user personal data via analytics, ads, other embedded contents are termed as non-necessary cookies. It is mandatory to procure user consent prior to running these cookies on your website.
SAVE & ACCEPT