188 research outputs found
The Comparative Advantages of "the Economic Zone on the West Shore of the Taiwan Strait" among the Southeast Coast Cities of China and its Development Strategies
The "Economic Zone on the West Shore of the Taiwan Strait" (WSTS) is a concept proposed by government of Fujian Province in 2004 and got the approval by the Chinese national government in 2009, and its development plan was officially published in March 2011. It is a region that cross the administrative boundaries - it is composed by the whole Fujian Province, 3 municipalities of Zhejiang Province, 4 municipalities of Jiangxi Province and 4 municipalities of Guangdong Province. This region gets its name because it is the part of mainland China that is nearest to Taiwan, and the region basically share the same culture and dialect with Taiwan. The main functions were designed to be "the pioneer stage of Taiwan-Mainland China cooperation, the places that serve as new gateways, the places that undertake the advanced manufacturing industries from/as Taiwan, and the new natural and cultural tourist center of China". Actually if considering the economies of Yangtze River delta to its north, the Pearl River Delta to its south and Taiwan to its east (its west sides are mountains), this region seems to be the economic lowlands of southeast coast of China. Relatively, its infrastructure, technology and talents present comparative disadvantages. Due to the development of transportation and information technology, the physical vicinity does not seem to be an advantage, thus "the pioneer stage of Taiwan-Mainland China cooperation and the area to undertake the moving out industries of Taiwan" in the development strategies seem inconvincible. The paper aims to rethink the comparative advantages of WSTS within the "territory cohesion" scheme - territory efficiency, territory quality and territory identity. The dimensions of "economic geography, economic performance, resource efficiency, internal and external accessibility, environment, access to knowledge, presence of ¡®social capital¡¯; landscape and cultural heritage", and also the policies that aim to attract the investors/inhabitants will be considered all over the main cities of the southeast coast of China. Through these reconsiderations, the comparative advantages and the position of this region in the city network of southeast China could be clear and its development strategies could be concluded
TransTailor: Pruning the Pre-trained Model for Improved Transfer Learning
The increasing of pre-trained models has significantly facilitated the
performance on limited data tasks with transfer learning. However, progress on
transfer learning mainly focuses on optimizing the weights of pre-trained
models, which ignores the structure mismatch between the model and the target
task. This paper aims to improve the transfer performance from another angle -
in addition to tuning the weights, we tune the structure of pre-trained models,
in order to better match the target task. To this end, we propose TransTailor,
targeting at pruning the pre-trained model for improved transfer learning.
Different from traditional pruning pipelines, we prune and fine-tune the
pre-trained model according to the target-aware weight importance, generating
an optimal sub-model tailored for a specific target task. In this way, we
transfer a more suitable sub-structure that can be applied during fine-tuning
to benefit the final performance. Extensive experiments on multiple pre-trained
models and datasets demonstrate that TransTailor outperforms the traditional
pruning methods and achieves competitive or even better performance than other
state-of-the-art transfer learning methods while using a smaller model.
Notably, on the Stanford Dogs dataset, TransTailor can achieve 2.7% accuracy
improvement over other transfer methods with 20% fewer FLOPs.Comment: This paper has been accepted by AAAI202
Constraining the denudation process in the eastern Sichuan Basin, China using low-temperature thermochronology and vitrinite reflectance data
The temperature history of samples and maximum palaeogeothermal profiles of boreholes were reconstructed based on low‐temperature thermochronology and vitrinite reflectance data, and the results provide limits for the timescale and amount of uplift–denudation of the eastern Sichuan Basin. The thermal history showed that the uplifting and cooling of eastern Sichuan Basin began around the Late Cretaceous (approximately 100–80 Ma). The region had experienced a continuous cooling process from the Late Cretaceous until the present, with the geothermal gradient decreasing from 32–36 °C/km to 20–23 °C/km. The amount of denudation at the Puguang region in north‐eastern Sichuan was approximately 2.3 km, whereas that at south‐eastern Sichuan was 1.9 km, and the erosion thickness in the eastern Sichuan fold belt that was revealed via the field samples is 2.3 ± 0.3–2.6 ± 0.3 km. The north‐eastern Sichuan experienced sustained cooling with inconspicuous fluctuations, whereas the thrust belt and the south‐eastern Sichuan Basin presented 2–4 stages with different cooling rates. It may indicate that the eastern Sichuan fold belt experienced a complex structural evolution, characterized by episodic upliftings and deformations since Late Cretaceous, while a different and gentle deformation took place in the northeastern Sichuan Basin
Probabilistic Constellation Shaping for OFDM-Based ISAC Signaling
Integrated Sensing and Communications (ISAC) has garnered significant
attention as a promising technology for the upcoming sixth-generation wireless
communication systems (6G). In pursuit of this goal, a common strategy is that
a unified waveform, such as Orthogonal Frequency Division Multiplexing (OFDM),
should serve dual-functional roles by enabling simultaneous sensing and
communications (S&C) operations. However, the sensing performance of an OFDM
communication signal is substantially affected by the randomness of the data
symbols mapped from bit streams. Therefore, achieving a balance between
preserving communication capability (i.e., the randomness) while improving
sensing performance remains a challenging task. To cope with this issue, in
this paper we analyze the ambiguity function of the OFDM communication signal
modulated by random data. Subsequently, a probabilistic constellation shaping
(PCS) method is proposed to devise the probability distributions of
constellation points, which is able to strike a scalable S&C tradeoff of the
random transmitted signal. Finally, the superiority of the proposed PCS method
over conventional uniformly distributed constellations is validated through
numerical simulations
Optimal Region Search with Submodular Maximization
Region search is an important problem in location based services due to its wide applications. In this paper, we study the problem of optimal region search with submodular maximization (ORS-SM). This problem considers a region as a connected subgraph. We compute an objective value over the locations in the region using a submodular function and a budget value by summing up the costs of edges in the region, and aim to search the region with the largest objective score under a budget value constraint. ORS-SM supports many applications such as the most diversified region search. We prove that the problem is NP-hard and develop two approximation algorithms with guaranteed error bounds. We conduct experiments on two applications using three real-world datasets. The results demonstrate that our algorithms can achieve high quality solutions and are faster than a state-of-the art method by orders of magnitude
Pollen morphology of selected tundra plants from the high Arctic of Ny-Ålesund, Svalbard
Documenting morphological features of modern pollen is fundamental for the identification of fossil pollen, which will assist researchers to reconstruct the vegetation and climate of a particular geologic period. This paper presents the pollen morphology of 20 species of tundra plants from the high Arctic of Ny-Ålesund, Svalbard, using light and scanning electron microscopy. The plants used in this study belong to 12 families: Brassicaceae, Caryophyllaceae, Cyperaceae, Ericaceae, Juncaceae, Papaveraceae, Poaceae, Polygonaceae, Ranunculaceae, Rosaceae, Salicaceae, and Scrophulariaceae. Pollen grain shapes included: spheroidal, subprolate, and prolate. Variable apertural patterns ranged from 2-syncolpate, 3-colpate, 3-(-4)-colpate, 3-(-5)-colpate, 3-colporate, 5-poroid, ulcerate, ulcus to pantoporate. Exine ornamentations comprised psilate, striate-perforate, reticulate, microechinate, microechinate-perforate, scabrate, granulate, and granulate-perforate. This study provided a useful reference for comparative studies of fossil pollen and for the reconstruction of paleovegetation and paleoclimate in Svalbard region of Arctic
Symbolic Discovery of Optimization Algorithms
We present a method to formulate algorithm discovery as program search, and
apply it to discover optimization algorithms for deep neural network training.
We leverage efficient search techniques to explore an infinite and sparse
program space. To bridge the large generalization gap between proxy and target
tasks, we also introduce program selection and simplification strategies. Our
method discovers a simple and effective optimization algorithm,
(\textit{Evo\textbf{L}\textbf{i}\textbf{o}\textbf{n}tum}).
It is more memory-efficient than Adam as it only keeps track of the momentum.
Different from adaptive optimizers, its update has the same magnitude for each
parameter calculated through the sign operation. We compare Lion with widely
used optimizers, such as Adam and Adafactor, for training a variety of models
on different tasks. On image classification, Lion boosts the accuracy of ViT by
up to 2% on ImageNet and saves up to 5x the pre-training compute on JFT. On
vision-language contrastive learning, we achieve 88.3% and
91.1% accuracy on ImageNet, surpassing the previous best
results by 2% and 0.1%, respectively. On diffusion models, Lion outperforms
Adam by achieving a better FID score and reducing the training compute by up to
2.3x. For autoregressive, masked language modeling, and fine-tuning, Lion
exhibits a similar or better performance compared to Adam. Our analysis of Lion
reveals that its performance gain grows with the training batch size. It also
requires a smaller learning rate than Adam due to the larger norm of the update
produced by the sign function. Additionally, we examine the limitations of Lion
and identify scenarios where its improvements are small or not statistically
significant. The implementation of Lion is publicly available.Comment: 30 pages, update the tuning instruction
ATPT: Automate Typhoon Contingency Plan Generation from Text
Artificial intelligence (AI) planning models play an important role in decision support systems for disaster management e.g. typhoon contingency plan development. However, constructing an AI planning model always requires significant amount of manual effort, which becomes a bottleneck to emergency response in a time-critical situation. In this demonstration, we present a framework of automating a domain model of planning domain definition language from natural language input through deep learning techniques. We implement this framework in a typhoon response system and demonstrate automatic generation of typhoon contingency plan from official typhoon plan documents
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