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On April 16, Solomon Hsiang, the Chancellor's Associate Professor of Public Policy at the University of California, Berkeley, and the Center's Noosheen Hashemi Visiting Scholar, will lead a discussion on data for adaption to climate change, moderated by Marshall Burke. A reception will be held from 4:30 - 5:00 pm. The main event begins at 5:00 pm.

About the speaker:

Solomon Hsiang combines data with mathematical models to understand how society and the environment influence one another. In particular, he focuses on how policy can encourage economic development while managing the global climate. His research has been published in Nature, Science, and the Proceedings of the National Academy of Sciences. 

Hsiang earned a BS in Earth, Atmospheric and Planetary Science and a BS in Urban Studies and Planning from the Massachusetts Institute of Technology, and he received a PhD in Sustainable Development from Columbia University. He was a Post-Doctoral Fellow in Applied Econometrics at the National Bureau of Economic Research (NBER) and a Post-Doctoral Fellow in Science, Technology and Environmental Policy at Princeton University. Hsiang is currently the Chancellor's Associate Professor of Public Policy at the University of California, Berkeley and a Research Associate at the NBER.

 

Contact: 
I Lin Chen
(650) 724-5482
ilinchen@stanford.edu

 

Event Sponsors: 
Stanford Center on Global Poverty and Development, Stanford Center on Food Security and the Environment
Center on Global Poverty and Development Speaker Series
 
 
 
 

 

Koret-Taube Conference Center

Seminars
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The practice of planting winter cover crops has seen renewed interest as a solution to environmental issues with the modern maize- and soybean-dominated row crop production system of the US Midwest. We examine whether cover cropping patterns can be assessed at scale using publicly available satellite data, creating a classifier with 91.5% accuracy (.68 kappa). We then use this classifier to examine spatial and temporal trends in cover crop occurrence on maize and soybean fields in the Midwest since 2008, finding that despite increased talk about and funding for cover crops as well as a 94% increase in cover crop acres planted from 2008–2016, increases in winter vegetation have been more modest. Finally, we combine cover cropping with satellite-predicted yields, finding that cover crops are associated with low relative maize and soybean production and poor soil quality, consistent with farmers adopting the practice on fields most in need of purported cover crop benefits. When controlling for invariant soil quality using a panel regression model, we find modest benefits of cover cropping, with average yield increases of 0.65% for maize and 0.35% for soybean. Given these slight impacts on yields, greater incentives or reduced costs of implementation are needed to increase adoption of this practice for the majority of maize and soybean acres in the US.

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Publication Type
Journal Articles
Publication Date
Journal Publisher
Environmental Research Letters
Authors
George Azzari
David Lobell
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Accurate prediction of crop yields in developing countries in advance of harvest time is central to preventing famine, improving food security, and sustainable development of agriculture. Existing techniques are expensive and difficult to scale as they require locally collected survey data. Approaches utilizing remotely sensed data, such as satellite imagery, potentially provide a cheap, equally effective alternative. Our work shows promising results in predicting soybean crop yields in Argentina using deep learning techniques. We also achieve satisfactory results with a transfer learning approach to predict Brazil soybean harvests with a smaller amount of data. The motivation for transfer learning is that the success of deep learning models is largely dependent on abundant ground truth training data. Successful crop yield prediction with deep learning in regions with little training data relies on the ability to fine-tune pre-trained models.

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Working Papers
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Journal Publisher
COMPASS '18 Proceedings of the 1st ACM SIGCAS Conference on Computing and Sustainable Societies
Authors
Anna Wang
Caelin Tran
Nikhil Desai
David Lobell
Stefano Ermon
Paragraphs

Millions of people worldwide are absent from their country’s census. Accurate, current, and granular population metrics are critical to improving government allocation of resources, to measuring disease control, to responding to natural disasters, and to studying any aspect of human life in these communities. Satellite imagery can provide sufficient information to build a population map without the cost and time of a government census. We present two Convolutional Neural Network (CNN) architectures which efficiently and effectively combine satellite imagery inputs from multiple sources to accurately predict the population density of a region. In this paper, we use satellite imagery from rural villages in India and population labels from the 2011 SECC census. Our best model achieves better performance than previous papers as well as LandScan, a community standard for global population distribution.

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Publication Type
Working Papers
Publication Date
Journal Publisher
AAAI/ACM Conference
Authors
Wenjie Hu, Jay Harshadbhai Patel, Zoe-Alanah Robert, Paul Novosad, Samuel Asher, Zhongyi Tang
Marshall Burke
David Lobell
Stefano Ermon
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The Bay Area Council Economic Institute and the Walter H. Shorenstein Asia-Pacific Research Center Japan Program invite you to a forum on the critical transformations underway in Japan’s economy and the unique synergies that connect it to the Bay Area. The program will include a discussion of the high-level findings of a new report by the Bay Area Council Economic Institute on Japan’s economic engagement in the San Francisco/Silicon Valley Bay Area, and the role the region is playing as California and Japan look to expand trade and investment and accelerate innovation. Leading experts and practitioners from both Japan and the Bay Area will join us for this discussion. 

This event is brought to you by the Shorenstein Asia-Pacific Research Center Japan Program and the Bay Area Council Economic Institute, in cooperation with the Japan Society of Northern California.

 

Agenda

 

1:00pm          Welcome

     Jim Wunderman, President & CEO, Bay Area Council

     Hon. Tomochika Uyama, Consul General of Japan

     Takeo Hoshi, Director, Shorenstein APARC Japan Program

1:10pm          Introduction of Bay Area Council Economic Institute Report: High-Level Findings

     Sean Randolph, Senior Director, Bay Area Council Economic Institute

1:30pm          Observations and Silicon Valley Overview

     Kenji Kushida, Research Scholar, Stanford University

1:45pm          Panel 1: The Emerging New Japan 

     Kanetaka Maki, Associate Professor, Waseda Business School

     Mio Takaoka, CFO, Medical Note and Partner, Arbor Ventures

     Takeshi Ebihara, Founding GP, Rebright Partners

     Emre Yuasa, Principal, Globis Capital Partners

     Sean Randolph, Senior Director, Bay Area Council Economic Institute (Moderator)

2:45pm          Panel 2: Japanese Companies in Silicon Valley Creating Value in New Ways

     Hiroshi Menjo, Managing Partner, Net Service Ventures

     Tsunehiko Yanagihara, Executive VP, Mitsubishi Corp M-LAB

     Gen Isayama, General Partner & CEO, World Innovation Lab

     Dennis Clark, Managing Director, Honda Innovations

     George Saikalis, SVP & CTO, Hitachi America, Ltd.

     Kenji Kushida, Research Scholar, Stanford University (Moderator)

4:00pm         Closing Remarks 

Bechtel Conference Center
Encina Hall
616 Serra Mall, Stanford, CA 94305

Panel Discussions
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Crop type mapping at the field level is necessary for a variety of applications in agricultural monitoring and food security. As remote sensing imagery continues to increase in spatial and temporal resolution, it is becoming an increasingly powerful raw input from which to create crop type maps. Still, automated crop type mapping remains constrained by a lack of field-level crop labels for training supervised classification models. In this study, we explore the use of random forests transferred across geographic distance and time and unsupervised methods in conjunction with aggregate crop statistics for crop type mapping in the US Midwest, where we simulated the label-poor setting by depriving the models of labels in various states and years. We validated our methodology using available 30 m spatial resolution crop type labels from the US Department of Agriculture's Cropland Data Layer (CDL). Using Google Earth Engine, we computed Fourier transforms (or harmonic regressions) on the time series of Landsat Surface Reflectance and derived vegetation indices, and extracted the coefficients as features for machine learning models. We found that random forests trained on regions and years similar in growing degree days (GDD) transfer to the target region with accuracies consistently exceeding 80%. Accuracies decrease as differences in GDD expand. Unsupervised Gaussian mixture models (GMM) with class labels derived using county-level crop statistics classify crops less consistently but require no field-level labels for training. GMM achieves over 85% accuracy in states with low crop diversity (Illinois, Iowa, Indiana, Nebraska), but performs sometimes no better than random when high crop diversity interferes with clustering (North Dakota, South Dakota, Wisconsin, Michigan). Under the appropriate conditions, these methods offer options for field-resolution crop type mapping in regions around the world with few or no ground labels.

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Publication Date
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Remote Sensing of Environment
Authors
Sherrie Wang
George Azzari
David Lobell
Authors
News Type
Blogs
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Twelve-year-old Lena is growing up poor and malnourished on Chicago’s West Side. She buys Blue Juice and Hot Chips from the corner store on her way to school. She and her classmates can afford the flavoured sugar water and salty starch, but this cheap “food” that fills up her stomach provides no nutritional value. 

Lena is one of over 20 million Americans living in food deserts, places without access to a full-service grocery store within two miles. Yet while Lena buys her Hot Chips, an affluent family nearby uses an online retail platform to order their weekly delivery of fresh, nutritious food – at prices that Lena and her family can’t afford. Despite a surge of technology innovations in food retail, Lena and her family represent a growing number of underserved customers around the world.

Read full story.

 

 

 

 

 

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This is part 2 of a talk presenting how innovative large Japanese companies are harnessing Silicon Valley. It is a review of the fireside chats and panels presented at the Silicon Valley – New Japan Summit last November at Stanford, which was in Japanese. The talk adds some historical context, and introduces through many of the company cases from the summit, including Panasonic, Fuji Film, Itochu, Rakuten, Obayashi, Nomura Holdings, Sourcenext, Komatsu, SMBC, and Toyota Research Institute.

The current surge of large Japanese companies into Silicon Valley is focused on firms aiming to identify new opportunities to collaborate with the startup ecosystem in order to understand future technological and industry trajectories, to facilitate new forms of “open” innovation within the company, and in some cases to even redefine how to add value to their core offerings. However, given a vast differently economic context from their core operations in Japan, many of the large Japanese firms’ initial forays tend to fall into patterns of “worst practices” that are ineffective. Yet, a small but growing number of innovative Japanese companies are producing novel and valuable collaborations with a variety of Silicon Valley firms, investors, and ecosystem players. The talk will survey a range of strategic options available to Japanese companies, with implications for how to better adapt companies from Japan to Silicon Valley, and more broadly from different political economic systems.

SPEAKER:

Kenji Kushida, Research Scholar, Shorenstein APARC Japan Program and Stanford Silicon Valley-New Japan Project Leader

BIO:

Kenji E. Kushida is the Japan Program Research Scholar at the Shorenstein Asia-Pacific Research Center at Stanford University (APARC), Project Leader of the Stanford Silicon Valley – New Japan Project (Stanford SV-NJ), research affiliate of the Berkeley Roundtable on the International Economy (BRIE), International Research Fellow at the Canon Institute for Global Studies (CIGS), and Visiting Researcher at National Institute for Research Advancement (NIRA). He holds a PhD in political science from the University of California, Berkeley, an MA in East Asian studies and BAs in economics and East Asian studies, all from Stanford University.

Kushida’s research streams include 1) Information Technology innovation, 2) Silicon Valley’s economic ecosystem, 3) Japan’s political economic transformation since the 1990s, and 4) the Fukushima nuclear disaster. He has published several books and numerous articles in each of these streams, including “The Politics of Commoditization in Global ICT Industries,” “Japan’s Startups Ecosystem,” “Cloud Computing: From Scarcity to Abundance,” and others. His latest business book in Japanese is “The Algorithmic Revolution’s Disruption: a Silicon Valley Vantage on IoT, Fintech, Cloud, and AI” (Asahi Shimbun Shuppan 2016).

He has appeared in media including The New York Times, Washington Post, Nihon Keizai Shimbun, Nikkei Business, NHK, PBS NewsHour, and NPR.

He is also a trustee of the Japan ICU Foundation, a fellow of the US-Japan Leadership Program, an alumni of the Trilateral Commission David Rockefeller Fellows, and a member of the Mansfield Foundation Network for the Future.

AGENDA:

4:15pm: Doors open
4:30pm-5:30pm: Talk and Discussion
5:30pm-6:00pm: Networking

RSVP REQUIRED:

Register to attend at http://www.stanford-svnj.org/12819

For more information about the Silicon Valley-New Japan Project please visit: http://www.stanford-svnj.org/

 

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Former Research Scholar, Japan Program
kenji_kushida_2.jpg
MA, PhD
Kenji E. Kushida was a research scholar with the Japan Program at the Walter H. Shorenstein Asia-Pacific Research Center from 2014 through January 2022. Prior to that at APARC, he was a Takahashi Research Associate in Japanese Studies (2011-14) and a Shorenstein Postdoctoral Fellow (2010-11).
 
Kushida’s research and projects are focused on the following streams: 1) how politics and regulations shape the development and diffusion of Information Technology such as AI; 2) institutional underpinnings of the Silicon Valley ecosystem, 2) Japan's transforming political economy, 3) Japan's startup ecosystem, 4) the role of foreign multinational firms in Japan, 4) Japan's Fukushima nuclear disaster. He spearheaded the Silicon Valley - New Japan project that brought together large Japanese firms and the Silicon Valley ecosystem.

He has published several books and numerous articles in each of these streams, including “The Politics of Commoditization in Global ICT Industries,” “Japan’s Startup Ecosystem,” "How Politics and Market Dynamics Trapped Innovations in Japan’s Domestic 'Galapagos' Telecommunications Sector," “Cloud Computing: From Scarcity to Abundance,” and others. His latest business book in Japanese is “The Algorithmic Revolution’s Disruption: a Silicon Valley Vantage on IoT, Fintech, Cloud, and AI” (Asahi Shimbun Shuppan 2016).

Kushida has appeared in media including The New York Times, Washington Post, Nihon Keizai Shimbun, Nikkei Business, Diamond Harvard Business Review, NHK, PBS NewsHour, and NPR. He is also a trustee of the Japan ICU Foundation, alumni of the Trilateral Commission David Rockefeller Fellows, and a member of the Mansfield Foundation Network for the Future. Kushida has written two general audience books in Japanese, entitled Biculturalism and the Japanese: Beyond English Linguistic Capabilities (Chuko Shinsho, 2006) and International Schools, an Introduction (Fusosha, 2008).

Kushida holds a PhD in political science from the University of California, Berkeley. He received his MA in East Asian Studies and BAs in economics and East Asian Studies with Honors, all from Stanford University.
Paragraphs

Low-intensity tillage has become more popular among farmers in the United States and many other regions. However, accurate data on when and where low-intensity tillage methods are being used remain scarce, and this scarcity impedes understanding of the factors affecting the adoption and the agronomic or environmental impacts of these practices. In this study, we used composites of satellite imagery from Landsat 5, 7, and 8, and Sentinel-1 in combination with producer data from about 5900 georeferenced fields to train a random forest classifier and generate annual large-scale maps of tillage intensity from 2005 to 2016. We tested different combinations of hyper-parameters using cross-validation, splitting the training and testing data alternatively by field, year, and state to assess the influence of clustering on validation results and evaluate the generalizability of the classification model. We found that the best model was able to map tillage practices across the entire North Central US region at 30 m-resolution with accuracies spanning between 75% and 79%, depending on the validation approach. We also found that although Sentinel-1 provides an independent measure that should be sensitive to surface moisture and roughness, it currently adds relatively little to classification performance beyond what is possible with Landsat. When aggregated to the state level, the satellite estimates of percentage low- and high-intensity tillage agreed well with a USDA survey on tillage practices in 2006 (R2 = 0.55). The satellite data also revealed clear increases in low-intensity tillage area for most counties in the past decade. Overall, the ability to accurately map spatial and temporal patterns in tillage should facilitate further study of this important practice in the United States, as well as other regions with fewer survey-based estimates.

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Publication Type
Journal Articles
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Journal Publisher
Remote Sensing of Environment
Authors
George Azzari
Patricio Grassini, Juan Ignaci, Rattalino Edreira, Shawn Conley, Spyridon Mourtzinis
David Lobell
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