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Donald K. Emmerson
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Singapore in Southeast Asia and Stanford University in the United States are focal points for discussions of AI and how it can be made to help—not hurt—human beings. In a piece written for RSIS Commentaries, Don Emmerson, Director of the Southeast Asia Program at APARC, uses a recent panel at Stanford to illustrate the difficulty and necessity of bringing both generalist and specialist perspectives to bear on the problem.


Singapore has been described as “a thriving hub for artificial intelligence.” In May 2019, Singapore’s Personal Data Protection Commission (PDPC) released the first edition of “A Proposed Model AI Governance Framework.”

That “accountability-based” document would “frame the discussions around harnessing AI in a responsible way” by “translat[ing] ethical principles into practical measures that can be implemented by organisations deploying AI solutions”. The guiding principles it proposes to operationalise are that AI systems should be “human-centric” and that decisions made by using them should be “explainable, transparent, and fair”….

Read the full article on RSiS Commentaries.

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Thomas Holme
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The world is “graying” at an unprecedented rate. According to the UN’s World Population Prospects 2019, the number of persons over the age of 65 is growing the fastest and expected to more than double by 2050, then triple in another 50 years’ time.

Some Asian countries in particular, plagued by population aging, declining fertility, and gender imbalance, are facing a grim outlook for a demographic crisis. In Japan, one in five people is now 70 or older, birthrate has dropped to a historic level, and the population declined by more than a quarter of a million last year. Meanwhile, South Korea is aging more quickly than any other developed country: with seniors on the verge of making up 14% of the population, the country is on the cusp of becoming an “aged society.” The potential impact of population aging on the labor market and the fiscal pressures on the public systems of healthcare, pensions, and social protection schemes for older adults are some of the many problems that these and other countries must tackle.

Against this background, Shorenstein APARC recently held the third annual gathering of the Stanford Asia-Pacific Innovation project, a Center-led initiative that produces academic and policy-relevant research to promote innovation and entrepreneurship in East Asia. Held in Chuncheon, South Korea and organized jointly with Hallym University’s Institute for Communication Arts and Technology, this year’s conference focused on the intersection of aging, technological development, and innovation in the region.

Gi-Wook Shin stans at a podium

(Gi-Wook Shin)

APARC Director Gi-Wook Shin opened the two-day session, introducing the conference’s themes. “What policies can promote innovation and entrepreneurship in aging populations?” Shin asked. “What opportunities do new technologies offer for addressing challenges posed by East Asia’s demographic shifts, and what are the threats involved in the adoption of these new technologies?”

Joon-Shik Park, vice president of the Office of Vision and Cooperation at Hallym University,  the conference host, noted that “East Asian countries are the most important testbeds on issues related to aging and innovation,” and that sharing meaningful research and implications from the region “will provide invaluable insights for all the societies around us.”

 Yong Suk Lee , Junichi Yamanoi , Young-Bum Kim, and Jiyoung Liu seated at a table

(From left to right, Yong Suk Lee , Junichi Yamanoi , Young-Bum Kim, and Jiyoung Liu)

Family Business Succession

Demographic forces and population aging at the macro level are altering family structures and assumptions at the micro level. For example, Junichi Yamanoi of Waseda University presented a study that examined how expectations around managerial succession at family firms had a significant impact on a firm’s long-term investments.

The study surveyed over 15,000 small and medium enterprises (SMEs) in the Tokyo metropolitan area. The participants were initially asked about their firm’s attributes, CEO demographics, and succession expectations. More than a year later (a time lag that eliminated reverse causality), a sampling of respondents was then asked about their current long-term investments (e.g., R&D, new product development, and internationalization activities).

Yamanoi and his coauthors found that, when a family business’ CEO was confident that a successor would follow, their firm was more likely to engage in long-term investment. Additionally, a CEO’s expectations that the successor would be someone other than their child resulted in an even greater likelihood of long-term investment.

As part of its policy propositions, the study recommends that government agencies and SME officers eager to increase investments by SMEs introduce external candidates to such firms. Moreover, family CEOs should be cautioned against investment decisions that are too short-term in orientation, as, due to inherent aversion to losses of socioemotional wealth for the family, they may unconsciously avoid long-term investments.

Javier Miranda presents at table

(Javier Miranda)

Rethinking Age and Entrepreneurship

At a luncheon keynote address, Javier Miranda, principal economist at the U.S. Census Bureau,  shared insights into the correlations between age and high-growth entrepreneurship, considering when in life people start firms and when they start the most successful firms.

Miranda acknowledged that youth is often perceived as being crucial to entrepreneurial success, referring to Mark Zuckerberg’s dictum, “Young people are just smarter.” Venture capitalist (VC) activity seems to support this notion, said Miranda, citing a sample of 35 VC-backed “unicorns” that resulted in a mean founder age of 31. He explained that VCs' high regard of young entrepreneurs may be attributed to a belief in young people's greater deductive reasoning, transformative thinking, and higher energy, optimism, and confidence.

But does the statistical evidence support such a view? It would seem not. Miranda’s data showed that the mean age for founders of any type of firm is 41.9. Furthermore, the mean age for founders of the most successful firms (those ready for Initial Public Offering market) was 45, and a founder at age 50 was approximately twice as likely to experience successful exit or high growth compared to a founder 20 years their junior.

In fact, dependent on the starting of a firm, the probability of a founder’s success peaked in the age range of 45-59. Pointing directly to entrepreneurs like Jobs and Bezos, Miranda conceded that even extremely talented people, who may be talented enough to succeed when young, peaked in middle age.

The results of Miranda’s study seem at odds with VC attraction to younger entrepreneurs. Experience, Miranda concluded, appeared to overwhelm any potential age advantage, but more research was needed to unpack the underlying predictors of entrepreneurial success over one’s life cycle.

Role of Technology in an Aging Populace

Day two of the conference focused on the promising role technology may play as populations age. APARC Research Scholar Kenji Kushida detailed both the current and impending problems Japan faces as its population both ages and shrinks in size, and the solutions possible through technological advancement like robotics, AI, and wearable devices.

For example, Japan’s demographic shift has had a double knock-on effect on agriculture, with the percentage of farm workers age 65 or older steadily rising over the last five years and the total cultivated agricultural land decreasing each passing year. Kushida described how ICT-enabled bulldozers allow farm owners to more precisely flatten the ground in rice paddies, resulting in both greater yields and cost savings as much as 40%.

Healthcare is another significant area of concern in Japan, as healthcare costs for people over 65 are four times that of younger people and medical costs as a proportion of GDP have been increasing sharply, especially in rural areas. Shortage of physicians and diagnostic technicians is another challenge. Kushida gave an example of a technology healthcare resource that enables clinics and hospitals to upload patient medical images which are then diagnosed by medical doctors affiliated with the tool's startup developer. This low-cost solution allows smaller, rural hospitals to tap into a larger network of physicians and specialists online.

While Japan’s technological trajectory has been driven primarily by the private sector, Kushida pointed out the important role played by government actors. Specifically, within the “Abenomics” reforms of Prime Minister Shinzo Abe, several key performance indicators include support for digitizing medical records, adoption of robotics in nursing care, and extending “healthy” life expectancy.

Edited volumes collecting the papers from the annual Stanford Asia-Pacific Innovation conferences are forthcoming. These will serve as valuable references for scholars and policymakers. The first conference was held at Stanford in 2017, and examined the industrial organization of businesses and innovation clusters and how such environments affect entrepreneurship. The second conference, held in September of 2018 in Beijing, analyzed the impact of public education and financial policies pursued by East Asian countries to promote entrepreneurship.

Presenters gathered on stage

 

 

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Wheat is the most important staple crop grown in Australia, and Australia is one of the top wheat exporting countries globally. Timely and reliable wheat yield prediction in Australia is important for regional and global food security. Prior studies use either climate data, or satellite data, or a combination of these two to build empirical models to predict crop yield. However, though the performance of yield prediction using empirical methods is improved by combining the use of climate and satellite data, the contributions from different data sources are still not clear. In addition, how the regression-based methods compare with various machine-learning based methods in their performance in yield prediction is also not well understood and needs in-depth investigation. This work integrated various sources of data to predict wheat yield across Australia from 2000 to 2014 at the statistical division (SD) level. We adopted a well-known regression method (LASSO, as a benchmark) and three mainstream machine learning methods (support vector machine, random forest, and neural network) to build various empirical models for yield prediction. For satellite data, we used the enhanced vegetation index (EVI) from MODIS and solar-induced chlorophyll fluorescence (SIF) from GOME-2 and SCIAMACHY as metrics to approximate crop productivity. The machine-learning based methods outperform the regression method in modeling crop yield. Our results confirm that combining climate and satellite data can achieve high performance of yield prediction at the SD level (R2 ˜ 0.75). The satellite data track crop growth condition and gradually capture the variability of yield evolving with the growing season, and their contributions to yield prediction usually saturate at the peak of the growing season. Climate data provide extra and unique information beyond what the satellite data have offered for yield prediction, and our empirical modeling work shows the added values of climate variables exist across the whole season, not only at some certain stages. We also find that using EVI as an input can achieve better performance in yield prediction than SIF, primarily due to the large noise in the satellite-based SIF data (i.e. coarse resolution in both space and time). In addition, we also explored the potential for timely wheat yield prediction in Australia, and we can achieve the optimal prediction performance with approximately two-month lead time before wheat maturity. The proposed methodology in this paper can be extended to different crops and different regions for crop yield prediction.

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Agricultural and Forest Meteorology
Authors
Yaping Cai
David Lobell
Andries B.Potgieter, Shaowen Wanga, Jian Peng, Tianfang Xu, Senthold Assen, Yongguang Zhang, Liangzhi You, Bin Peng
Authors
Donald K. Emmerson
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Trust but verify. That mantra from nuclear-weapons negotiation discourse during the Cold War is newly relevant today. Versions of the advice are circulating among governments in Southeast Asia and elsewhere as they weigh the security risks of partnering with this or that company to install the fifth-generation telecommunications technology known as 5G.

It is tempting to believe that a technical solution to the problem of unwanted risk exists — a clever digital tweak that will fully and permanently protect a 5G network’s users. It does not. The best one can hope for is a “good enough” balancing of faith and proof that is — arguably, not assuredly — reassuring and realistic. Characteristics of the network-offering company in its home country and of the network-purchasing government in its own country will shape the 5G seller-buyer bargain and its location. This will occur on an eventual spectrum of arrangements between the unwise and the unworkable: unverified trust at one extreme end, trust-eliminating verification at the other....

Read the full article on RSiS Commentaries.

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The diffusion and deployment of technology is not simply shaped by the technology itself. Complementary technologies are often required to derive value from the technology, and other factors such as business models for which the technology solves significant “pain points.” Business organizations that can harness the set of technologies, along with societal factors such as regulations, employment regimes, demographics, social norms, and political dynamics can critically affect how technologies diffuse.

This conference is centered on the technological development, deployment, and diffusion of various forms of human-machine interfaces. In the morning, it examines technologies utilizing AI, IA, and pushing human-machine interfaces to the next level of commercial development (morning session A). It also introduces frontier research in medical fields and focuses on how a design approach has been effective for how medical products and solutions have been developed (morning session B). In the afternoon, it turns to a discussion of policy dynamics and considerations surrounding the use of AI and IA, particularly in broad societal deployments

This conference is a joint production of the Shorenstein Asia Pacific Research Center (APARC) Japan Program’s Stanford Silicon Valley - New Japan Project, and Japanese venture community, Mistletoe, Inc.

Agenda

*Agenda subject to change

9:00 - 9:30             Registration

9:30 - 9:40             Welcome Remarks

9:40 - 11:00           Morning Session A: Next Generation Human Machine Interfaces: From Science Fiction to Reality to Industrial Deployment

Presentations followed by discussion:

Ryoichi Togashi, Program Director, Komatsu

Andrew Pedtke, Co-founder and CEO, Lim Innovations

Lochlainn Wilson, CEO, SE4

Moderator: Kenji Kushida, Research Scholar, Stanford University

11:00 - 11:15         Break

11:15 - 12:30         Morning Session B: Bio Design and Medical Technologies, and University-Industry Ecosystems

Presentations followed by discussion:

Atsushi Taira, Chief Growth Officer, Mistletoe, Inc.

Gordon Miller Saul, Executive Director,  Stanford Byers Center for Biodesign

Christoph Leuze, Research Scientist, Stanford Radiological Sciences Lab

Pushkar Apte, Director of Strategic Initiatives, CITRIS and the Banatao Institute, UC Berkeley

Moderator: Kenji Kushida, Research Scholar, Stanford University

12:30 - 13:30        Lunch

1:30 - 15:00          Afternoon Discussion: Regulations, politics, and industry dynamic with considerations of accountability and ethics

Presentations followed by discussion:

Kenji Kushida, Research Scholar, Stanford University

Mei Lin Fung, Co-Founder, People-Centered Internet

Rosanna Guadagno, Director, Information Warfare Working Group, Stanford University

Mike Nelson, Head of Public Policy, CloudFlare

Moderator: Jaclyn Selby, Research Scholar, Stanford University

15:00                    Closing Remarks

RSVP REQUIRED

Limited seating available. Seats will be filled on a first come, first serve basis.

RSVP Deadline: May 20, 2019

RSVP link: http://www.stanford-svnj.org/52119conference

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Accurate measurements of maize yields at field or subfield scales are useful for guiding agronomic practices and investments and policies for improving food security. Data on smallholder maize systems are currently sparse, but satellite remote sensing offers promise for accelerating learning about these systems. Here we document the use of Google Earth Engine (GEE) to build “wall-to-wall” 10 m resolution maps of (i) cropland presence, (ii) maize presence, and (iii) maize yields for the main 2017 maize season in Kenya and Tanzania. Mapping these outcomes at this scale is extremely challenging because of very heterogeneous landscapes, lack of cloud-free satellite imagery, and the low quantity of quality ground-based data in these regions.

First, we computed seasonal median composites of Sentinel-1 radar backscatter and Sentinel-2 optical reflectance measures for each pixel in the region, and used them to build both crop/non-crop and maize/non-maize Random Forest (RF) classifiers. Several thousand crop/non-crop labels were collected through an in-house GEE labeler, and thousands of crop type labels from the 2015–2017 growing seasons were obtained from various sources. Results show that the crop/non-crop classifier successfully identified cropland with over 85% out-of-sample accuracy in both countries, with Sentinel-1 being particularly useful for prediction. Among the cropped pixels, the maize/non-maize classier had an accuracy of 79% in Tanzania and 63% in Kenya.

To map maize yields, we build on past work using a scalable crop yield mapper (SCYM) that utilizes simulations from a crop model to train a regression that predicts yields from observations. Here we advance past approaches by (i) grouping simulations by Global Agro-Environmental Stratification (GAES) zones across the two countries, in order to account for landscape heterogeneity, (ii) utilizing gridded datasets on soil and sowing and harvest dates to setup model simulations in a scalable way; and (iii) utilizing all available satellite observations during the growing season in a parsimonious way by using harmonic regression fits implemented in GEE. SCYM estimates were able to capture about 50% of the variation in the yields at the district level in Western Kenya as measured by objective ground-based crop cuts.

Finally, we illustrated the utility of our yield maps with two case studies. First, we document the magnitude and interannual variability of spatial heterogeneity of yields in each district, and how it varies for different parts of the region. Second, we combine our estimates with recently released soil databases in the region to investigate the most important soil constraints in the region. Soil factors explain a high fraction (72%) of variation in predicted yields, with the predominant factor being soil nitrogen levels. Overall, this study illustrates the power of combining Sentinel-1 and Sentinel-2 imagery, the GEE platform, and advanced classification and yield mapping algorithms to advance understanding of smallholder agricultural systems.

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Remote Sensing of Environment
Authors
George Azzari
Calum You
Stefania Di Tommaso
Stephen Aston
Marshall Burke
David Lobell
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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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Remote Sensing of Environment
Authors
George Azzari
Patricio Grassini, Juan Edreira, Shawn Conley, Spyridon Mourtzinis
David Lobell
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Fast, accurate and inexpensive estimates of crop yields at the field scale are useful for many applications. Based on the Google Earth Engine (GEE) platform, we recently developed a Scalable satellite-based Crop Yield Mapper (SCYM) that integrates crop simulations with satellite imagery and gridded weather data to generate 30 m resolution yield estimates for multiple crops in different regions. Existing versions of SCYM typically capture one-third to half of the variation in reported county-scale yields. Using rainfed maize in the US Midwest as an example, this study tested multiple approaches for improving SCYM’s accuracy, including (i) calibrating the phenology parameters of the crop model (APSIM) used to generate training samples for SCYM; (ii) using an ensemble of three crop models (APSIM-Maize, CERES-Maize, and Hybrid-Maize) instead of a single model; (iii) using simulated biomass from the crop models instead of simulated yields to train SCYM, with the former assuming a constant harvest index (HI). Results show substantial improvement in performance, as assessed using reported county yields by USDA-NASS, both from calibrating APSIM phenology parameters and from training SCYM on simulated biomass rather than yields. Using a multi-model ensemble further improves SCYM, although the benefit is limited. The proposed preferred version of SCYM on average captures 75% of the yield variation for 2001–2015 in the 3I states (i.e. Illinois, Indiana and Iowa) where SCYM is trained, with RMSE typically less than 1 t/ha, and explains 41% to 83% of multi-year yield variations when tested across nine Midwestern US states for 2008–2015. This level of accuracy is particularly notable given that only data from 2014 were used to calibrate phenology parameters. The yield estimates for multiple years in multiple states utilized 1184 Landsat tiles, but could be completed in about 2 h per year by using the GEE platform. All approaches tested in this study do not require any site-specific measurements, and thus can be readily extended to other regions and crops.

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Agricultural and Forest Meteorology
Authors
George Azzari
David Lobell
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Wheat is the most important Ethiopian crop, and rust one of its greatest antagonists. There is a need for cheap and scalable rust monitoring in the developing world, but existing methods employ costly data collection techniques. We introduce a scalable, accurate, and inexpensive method for tracking outbreaks with publicly available remote sensing data. Our approach improves existing techniques in two ways. First, we forgo the spectral features employed by the remote sensing community in favor of automatically learned features generated by Convolutional and Long Short-Term Memory Networks. Second, we aggregate data into larger geospatial regions. We evaluate our approach on nine years of agricultural outcomes, show that it outperforms competing techniques, and demonstrate its predictive foresight. This is a promising new direction in crop disease monitoring, one that has the potential to grow more powerful with time.

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2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops
Authors
Reid Pryzant
Stefano Ermon
David Lobell
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Eradicating hunger and malnutrition is a key development goal of the twenty first century. This paper addresses the problem of optimally identifying seed varieties to reliably increase crop yield within a risk-sensitive decision making framework. Specifically, a novel hierarchical machine learning mechanism for predicting crop yield (the yield of different seed varieties of the same crop) is introduced. This prediction mechanism is then integrated with a weather forecasting model and three different approaches for decision making under uncertainty to select seed varieties for planting so as to balance yield maximization and risk. The model was applied to the problem of soybean variety selection given in the 2016 Syngenta Crop Challenge. The prediction model achieved a median absolute error of 235 kg/ha and thus provides good estimates for input into the decision models. The decision models identified the selection of soybean varieties that appropriately balance yield and risk as a function of the farmer’s risk aversion level. More generally, the models can support farmers in decision making about which seed varieties to plant.

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Journal Articles
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Environment Systems and Decisions
Authors
Huaiyang Zhong, Xiaocheng Li
David Lobell
Stefano Ermon
Margaret Brandeau
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