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University Calendar
Events for June
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PhD Defense - Zahra Nazari
Wed, Jun 07, 2017 @ 01:00 PM - 02:00 PM
Thomas Lord Department of Computer Science
University Calendar
PhD Candidate: Zahra Nazari
Date: Wed, June 7th
Time : 1 PM
Location: KAP134
Committee :
Dr. Jonathan Gratch
Dr. Milind Tambe
Dr Peter Kim
Title : Automated Negotiation with Humans
Negotiation is a crucial skill in personal and organizational interactions. In the last two decades, there has been a growing interest to create agents that can autonomously negotiating with other agents. The focus of this thesis, however, is on creating agents that can negotiate with human opponents. Besides improving on artificial social intelligence, such agents could be used for the purpose of training or assisting human negotiators. A central challenge is to handle the complexity of actual human behavior. When compared with idealized game-theoretic models,
human negotiations are far richer, both in terms of the nature of information exchanged and the number of factors that inform their decision-making.
We consider a negotiation task that is simple, yet general enough to drive agent-human research, and
analyze an extensive data set of transcribed human negotiation on such tasks.
Based on human behavior in this task, and the previous research on human negotiations, we propose a new framework to structure the design of agents that negotiate with people. We address two main decision problems inspired by this framework: modeling and influencing the opponent. Three techniques are proposed to model an opponent's preferences and character (e.g. honesty and personality traits) and a misrepresentation technique is then used to influence the opponent and gain better profit. The proposed techniques are then implemented in automatic web-based agents. We ran a number of negotiations between these agents and humans recruited on Amazon Mechanical Turk. The resulting data show that the agents can perform these strategies successfully when negotiating with human counterparts and give us valuable insight about the behavior of humans when negotiating with an agent.
Location: Kaprielian Hall (KAP) - 134
Audiences: Everyone Is Invited
Contact: Lizsl De Leon
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PhD Defense - Rose Yu
Wed, Jun 07, 2017 @ 01:30 PM - 03:30 PM
Thomas Lord Department of Computer Science
University Calendar
PhD Candidate: Rose Yu
Date: June 7, 2017
Time: 1:30-3:30pm
Location: SAL 213
Committee:
Yan Liu
Cyrus Shahabi
Mahdi Soltanolkotabi (outside member)
Title:
Tensor learning for Large-Scale Spatiotemporal Analysis
Abstract:
Spatiotemporal data is ubiquitous in our daily life, including climate, transportation,
and social media. Today, data is being collected at an unprecedented scale.
Yesterdays concepts and tools are insufficient to serve tomorrow's data-driven
decision makers. Particularly, spatiotemporal data often demonstrates complex
dependency structures and is of high dimensionality. This requires new machine
learning algorithms that can handle highly correlated samples, perform efficient
dimension reduction, and generate structured predictions.
In this talk, I will present tensor methods, a scalable framework for capturing
high-order structures in spatiotemporal data. I will demonstrate how to learn from
spatiotemporal data efficiently in both offline and online setting. I will also show
interesting discoveries by our methods in climate and social media applications.
Location: 213
Audiences: Everyone Is Invited
Contact: Lizsl De Leon
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PhD Defense - Simon Woo
Mon, Jun 12, 2017 @ 09:00 AM - 11:00 AM
Thomas Lord Department of Computer Science
University Calendar
PhD Candidate: Simon Woo
Date: June 12, 2017
Time: 9:00am-11:00am
Location: SAL 322
Committee:
Jelena Mirkovic (Adviser)
Ron Artstein
Kevin Knight
Elsi Kaiser (outside member)
Title: MEMORABLE, SECURE, AND USABLE AUTHENTICATION SECRETS
Abstract:
Textual passwords are widely used for user authentication, but they are often difficult for a user to recall, and easily cracked by automated programs, and heavily re-used. Weak or reused passwords are guilty for many contemporary security breaches. Hence, it is critical to study both how users choose and reuse passwords, and the reasons that they adopt unsafe practices. In this thesis, I first examine the reasons why people create weak passwords and reuse these over multiple accounts. My research complements the body of existing works by studying the semantic structure, strength and reuse of real passwords, as well as conscious and unconscious causes of unsafe practices, using a test group population of 50 participants. Significant reuse and weak passwords clearly demonstrate the need for alternative authentication methods that are more memorable, secure, and less reused. My next three key thesis topics focus on developing novel authentication mechanisms that can directly improve current approaches. The first approach, "Life-Experience Passwords (LEPs)." uses a person's prior life experience as information to generate more memorable and secure authentication questions. We show that LEPs significantly raise the level of memorability and security compared to existing passwords and security questions. My second approach constructs more memorable and more secure passphrases through the novel use of mnemonics - multi-letter abbreviations of passphrases (MNPass), made of the first letters of each word in a passphrase. I apply mnemonics when generating and authenticating passphrases and show that the mnemonics-based approach improved recall compared to randomly generated passphrases and enhanced strength compared to user-selected passphrases. My last work explores password creation with semantic feedback (GuidedPass). I analyze user-input passwords and provide real-time, specific suggestions for improvement based on their existing semantic structure. GuidedPass passwords are 10^4 to 10^7 times stronger and as memorable as user initial passwords. GuidedPass passwords are also 100 times stronger and 1.2 times more memorable than passwords created with only password-meter feedback.
Bio:
Simon Woo is a Ph.D. candidate advised by Prof. Jelena Mirkovic. His current research focuses on improving user authentication, and understanding human factors in cybersecurity to better design secure systems.
Location: 322
Audiences: Everyone Is Invited
Contact: Lizsl De Leon