Falls County
Do Question Answering Modeling Improvements Hold Across Benchmarks?
Liu, Nelson F., Lee, Tony, Jia, Robin, Liang, Percy
Do question answering (QA) modeling improvements (e.g., choice of architecture and training procedure) hold consistently across the diverse landscape of QA benchmarks? To study this question, we introduce the notion of concurrence -- two benchmarks have high concurrence on a set of modeling approaches if they rank the modeling approaches similarly. We measure the concurrence between 32 QA benchmarks on a set of 20 diverse modeling approaches and find that human-constructed benchmarks have high concurrence amongst themselves, even if their passage and question distributions are very different. Surprisingly, even downsampled human-constructed benchmarks (i.e., collecting less data) and programmatically-generated benchmarks (e.g., cloze-formatted examples) have high concurrence with human-constructed benchmarks. These results indicate that, despite years of intense community focus on a small number of benchmarks, the modeling improvements studied hold broadly.
- North America > United States > California > Los Angeles County > Los Angeles (0.28)
- North America > United States > Texas > McLennan County > Waco (0.04)
- North America > United States > Texas > Falls County (0.04)
- (7 more...)
- Government > Regional Government > North America Government > United States Government (0.67)
- Leisure & Entertainment > Sports > Football (0.46)
- Leisure & Entertainment > Sports > Basketball (0.46)
Institutional Foundations of Adaptive Planning: Exploration of Flood Planning in the Lower Rio Grande Valley, Texas, USA
Ross, Ashley D., Nejat, Ali, Greb, Virgie
INTRODUCTION Adaptive planning is ideally suited for the deep uncertainties presented by climate change. While there is a robust scholarship on the theory and methods of adaptive planning, this has largely neglected how adaptive planning is affected by existing planning institutions and how to move forward within the constraints of traditional planning organizations. This study asks: How do existing traditional planning institutions support adaptive planning? We explore this for flood planning in the Lower Rio Grande Valley of Texas, United States. We draw on county hazard plan and regional flood plan documents as well as transcripts of regional flood planning meetings to explore the emergent topics of these institutional outputs. Using Natural Language Processing to analyze this large amount of text, we find that hazard plans and discussions developing these plans are largely lacking an adaptive approach. KEYWORDS adaptive planning; uncertainty; flood plan; Rio Grande Valley INTRODUCTION Planning for natural hazard risk reduction in the context climate change involves decision making under conditions of interacting, multiple uncertainties. Some of these are "deep uncertainties" connected to long time horizons, nonlinear changes in climates and ecosystems, and inability to reliably quantify the rate and magnitude of climate changes (Babovic & Mijic, 2018; Bosomworth & Gaillard, 2019). Other uncertainties are associated with the ambiguities and unpredictability of socioeconomic systems, including population growth, land use change, social conflict, and the whims of political will (Babovic & Mijic 2019; Buurman & Babovic, 2014). In the face of these uncertainties, a new paradigm of decision making has emerged that emphasizes the development of adaptive plans and policies (Hassnoot et al., 2013; Walker et al., 2013). Traditional planning approaches typically generate a static optimal plan to reduce vulnerability to a single'most likely' future or to respond a wide range of plausible future scenarios (Haasnoot et al., 2013; Manocha & Babovic, 2018). Because the future is largely unknowable, static optimal plans are likely to fail and adaptations are made adhoc to adjust to emerging risk conditions (Haasnoot et al., 2013).
- North America > United States > Texas > Starr County (0.14)
- North America > United States > Texas > Hidalgo County (0.14)
- North America > United States > Texas > Cameron County (0.14)
- (14 more...)
FactGraph: Evaluating Factuality in Summarization with Semantic Graph Representations
Ribeiro, Leonardo F. R., Liu, Mengwen, Gurevych, Iryna, Dreyer, Markus, Bansal, Mohit
Despite recent improvements in abstractive summarization, most current approaches generate summaries that are not factually consistent with the source document, severely restricting their trust and usage in real-world applications. Recent works have shown promising improvements in factuality error identification using text or dependency arc entailments; however, they do not consider the entire semantic graph simultaneously. To this end, we propose FactGraph, a method that decomposes the document and the summary into structured meaning representations (MR), which are more suitable for factuality evaluation. MRs describe core semantic concepts and their relations, aggregating the main content in both document and summary in a canonical form, and reducing data sparsity. FactGraph encodes such graphs using a graph encoder augmented with structure-aware adapters to capture interactions among the concepts based on the graph connectivity, along with text representations using an adapter-based text encoder. Experiments on different benchmarks for evaluating factuality show that FactGraph outperforms previous approaches by up to 15%. Furthermore, FactGraph improves performance on identifying content verifiability errors and better captures subsentence-level factual inconsistencies.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Oceania > Australia > Victoria > Melbourne (0.04)
- (20 more...)
- Government > Regional Government > North America Government > United States Government (0.67)
- Law (0.46)
First national 'bee map' charts their decline – but hopes to stem the trend
February 21, 2017 --Scientists have compiled a map detailing wild bee activity across the US, but the picture it paints isn't great. It's no secret that bees are struggling to stay aloft. The precise reasons are up for debate, but many experts agree that a perfect storm of pressures from pesticide use, the rise of monocrop agriculture, declines in natural habitat, and global warming are squeezing many bee populations out of existence. A 2016 UN report found that 2 out of every 5 spineless pollinator species are facing extinction. Unchecked, this trend could have disastrous consequences for global agriculture.
- South America (0.05)
- North America > United States > Vermont (0.05)
- North America > United States > Texas > Falls County (0.05)
- (4 more...)