Lika-Senj County
Underwater Acoustic Signal Denoising Algorithms: A Survey of the State-of-the-art
Gao, Ruobin, Liang, Maohan, Dong, Heng, Luo, Xuewen, Suganthan, P. N.
This paper comprehensively reviews recent advances in underwater acoustic signal denoising, an area critical for improving the reliability and clarity of underwater communication and monitoring systems. Despite significant progress in the field, the complex nature of underwater environments poses unique challenges that complicate the denoising process. We begin by outlining the fundamental challenges associated with underwater acoustic signal processing, including signal attenuation, noise variability, and the impact of environmental factors. The review then systematically categorizes and discusses various denoising algorithms, such as conventional, decomposition-based, and learning-based techniques, highlighting their applications, advantages, and limitations. Evaluation metrics and experimental datasets are also reviewed. The paper concludes with a list of open questions and recommendations for future research directions, emphasizing the need for developing more robust denoising techniques that can adapt to the dynamic underwater acoustic environment.
- North America > Canada (0.14)
- Asia > China > Heilongjiang Province > Harbin (0.04)
- Pacific Ocean > North Pacific Ocean > San Francisco Bay (0.04)
- (6 more...)
- Overview (1.00)
- Research Report > New Finding (0.46)
- Government (0.67)
- Energy (0.46)
Boosting In-Context Learning with Factual Knowledge
Wang, Jianing, Wang, Chengyu, Tan, Chuanqi, Huang, Jun, Gao, Ming
In-Context Learning (ICL) over Large language models (LLMs) aims at solving previously unseen tasks by conditioning on a few training examples, eliminating the need for parameter updates and achieving competitive performance. In this paper, we demonstrate that factual knowledge is imperative for the performance of ICL in three core facets, i.e., the inherent knowledge learned in LLMs, the factual knowledge derived from the selected in-context examples, and the knowledge biases in LLMs for output generation. To unleash the power of LLMs in few-shot learning scenarios, we introduce a novel Knowledgeable In-Context Tuning (KICT) framework to further improve the performance of ICL: 1) injecting factual knowledge to LLMs during continual self-supervised pre-training, 2) judiciously selecting the examples with high knowledge relevance, and 3) calibrating the prediction results based on prior knowledge. We evaluate the proposed approaches on auto-regressive LLMs (e.g., GPT-style models) over multiple text classification and question answering tasks. Experimental results demonstrate that KICT substantially outperforms strong baselines, and improves by more than 13% and 7% of accuracy on text classification and question answering tasks, respectively.
- North America > United States > Illinois > Cook County > Chicago (0.04)
- North America > Canada > Quebec > Montreal (0.04)
- Europe > Spain (0.04)
- (9 more...)
Dynamic Coattention Networks For Question Answering
Xiong, Caiming, Zhong, Victor, Socher, Richard
Several deep learning models have been proposed for question answering. However, due to their single-pass nature, they have no way to recover from local maxima corresponding to incorrect answers. To address this problem, we introduce the Dynamic Coattention Network (DCN) for question answering. The DCN first fuses co-dependent representations of the question and the document in order to focus on relevant parts of both. Then a dynamic pointing decoder iterates over potential answer spans. This iterative procedure enables the model to recover from initial local maxima corresponding to incorrect answers. On the Stanford question answering dataset, a single DCN model improves the previous state of the art from 71.0% F1 to 75.9%, while a DCN ensemble obtains 80.4% F1.
- Asia > Singapore (0.04)
- Asia > China (0.04)
- North America > United States > California > Santa Clara County > Palo Alto (0.04)
- (2 more...)
- Law (0.95)
- Government > Regional Government > Europe Government (0.48)