561 research outputs found
Love Sip
Love Sip is an animated graduate thesis film. The entire film, including the credits, is 4 minutes 58 seconds long. The premier of the film occurred in December 2015 in the School of Film and Animation’s end of semester screenings at Rochester Institute of Technology.
The story takes place in a vending machine. The main characters are a bottle of Soda and a bottle of Juice. They fall in love and try to escape from the vending machine. Their journey is challenging, action packed, and with the promise that their love for each will survive.
Love Sip is a 3D animation that combines 2D with 3D software, including Adobe Photoshop, Autodesk Maya, Pixologic Zbrush, Adobe After Effects and Adobe Premiere. The final output format is 720P HD with a high-quality stereophonic track. This thesis was inspired by process, feelings, challenges, and breakthroughs in my production, and progressive learning and understanding of animation
Unitary and non-unitary minimal models
The unitary superconformal minimal models have a long history in
string theory and mathematical physics, while their non-unitary (and
logarithmic) cousins have recently attracted interest from mathematicians.
Here, we give an efficient and uniform analysis of all these models as an
application of a type of Schur-Weyl duality, as it pertains to the well-known
Kazama-Suzuki coset construction. The results include straightforward
classifications of the irreducible modules, branching rules, (super)characters
and (Grothendieck) fusion rules.Comment: 32 page
Can pro-environmental behavior increase farmers’ income?—Evidence from arable land quality protection practices in China
In China, agricultural non-point source pollution is one of the key
factors limiting farmers’ income growth, and pro-environmental
behavior can address agricultural surface pollution. Based on field
survey data from 591 farmers in Xinjiang, China, this study empirically
estimates the impact of pro-environmental behavior on
farmers’ income growth. The results show that pro-environmental
behavior plays a significant positive role in increasing farmers’
income, and the positive effect continues in the long run.
Specifically, pro-environmental behavior can optimize the allocation
of agricultural production factors, thus resulting in farmers’
income growth. The mechanism analysis shows that pro-environmental
behavior affects farmers’ income growth by promoting
the increase in the size of arable land and farmers’ willingness to
transfer their land in the future. These findings indicate that a
sound reward–punishment system for pro-environmental behavior
should be established; training on pro-environmental behavior
should be strengthened, and a mechanism for linking the benefits
of pro-environmental behavior among stakeholders should be
constructed
Measuring, Interpreting, and Improving Fairness of Algorithms using Causal Inference and Randomized Experiments
Algorithm fairness has become a central problem for the broad adoption of
artificial intelligence. Although the past decade has witnessed an explosion of
excellent work studying algorithm biases, achieving fairness in real-world AI
production systems has remained a challenging task. Most existing works fail to
excel in practical applications since either they have conflicting measurement
techniques and/ or heavy assumptions, or require code-access of the production
models, whereas real systems demand an easy-to-implement measurement framework
and a systematic way to correct the detected sources of bias.
In this paper, we leverage recent advances in causal inference and
interpretable machine learning to present an algorithm-agnostic framework
(MIIF) to Measure, Interpret, and Improve the Fairness of an algorithmic
decision. We measure the algorithm bias using randomized experiments, which
enables the simultaneous measurement of disparate treatment, disparate impact,
and economic value. Furthermore, using modern interpretability techniques, we
develop an explainable machine learning model which accurately interprets and
distills the beliefs of a blackbox algorithm. Altogether, these techniques
create a simple and powerful toolset for studying algorithm fairness,
especially for understanding the cost of fairness in practical applications
like e-commerce and targeted advertising, where industry A/B testing is already
abundant
Beyond Keywords and Relevance: A Personalized Ad Retrieval Framework in E-Commerce Sponsored Search
On most sponsored search platforms, advertisers bid on some keywords for
their advertisements (ads). Given a search request, ad retrieval module
rewrites the query into bidding keywords, and uses these keywords as keys to
select Top N ads through inverted indexes. In this way, an ad will not be
retrieved even if queries are related when the advertiser does not bid on
corresponding keywords. Moreover, most ad retrieval approaches regard rewriting
and ad-selecting as two separated tasks, and focus on boosting relevance
between search queries and ads. Recently, in e-commerce sponsored search more
and more personalized information has been introduced, such as user profiles,
long-time and real-time clicks. Personalized information makes ad retrieval
able to employ more elements (e.g. real-time clicks) as search signals and
retrieval keys, however it makes ad retrieval more difficult to measure ads
retrieved through different signals. To address these problems, we propose a
novel ad retrieval framework beyond keywords and relevance in e-commerce
sponsored search. Firstly, we employ historical ad click data to initialize a
hierarchical network representing signals, keys and ads, in which personalized
information is introduced. Then we train a model on top of the hierarchical
network by learning the weights of edges. Finally we select the best edges
according to the model, boosting RPM/CTR. Experimental results on our
e-commerce platform demonstrate that our ad retrieval framework achieves good
performance
A Comprehensive Research of Atmospheric Haze by Optical Remote Sensing in Central China Region (CCR)
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