Machine learning books and papers
前往频道在 Telegram
📈 Telegram 频道 Machine learning books and papers 的分析概览
频道 Machine learning books and papers (@machine_learn) 英语 语言赛道中的 是活跃参与者。目前社区聚集了 24 516 名订阅者,在 教育 类别中位列第 8 048,并在 伊朗 地区排名第 13 749 位。
📊 受众指标与增长动态
自 невідомо 创建以来,项目保持高速增长,吸引了 24 516 名订阅者。
根据 26 六月, 2026 的最新数据,频道保持稳定运转。过去 30 天订阅人数变化为 -162,过去 24 小时变化为 -2,整体触达仍然可观。
- 认证状态: 未认证
- 互动率 (ER): 平均受众互动率为 5.76%。内容发布后 24 小时内通常能获得 1.79% 的反应,占订阅者总量。
- 帖子覆盖: 每篇帖子平均可获得 1 412 次浏览,首日通常累积 440 次浏览。
- 互动与反馈: 受众积极参与,单帖平均反应数为 1。
- 主题关注点: 内容集中在 disorder, psy, مقاله, framework, graph 等核心主题上。
📝 描述与内容策略
作者将该频道定位为表达主观观点的平台:
“Admin: @Raminmousa
ID: @Machine_learn
link: https://t.me/Machine_learn”
凭借高频更新(最新数据采集于 27 六月, 2026),频道始终保持新鲜度与高覆盖。分析显示受众积极互动,使其成为 教育 类别中的关键影响点。
24 516
订阅者
-224 小时
-337 天
-16230 天
帖子存档
Repost from Papers
با عرض سلام
مقاله ی زیر تماما نگارش شده و اماده سابمیت از دوستان کسی خواست نفرات ۳ و ۴ اش خالی هست.
IEEE Geoscience and Remote Sensing Letter
Impact factor 4
CiteScore 7.6
------------------------------
Title: Enhanced-HisSegNet: An Enhanced Histagram Layered Segmentation Network for SAR Image-based Flood Segmentation
------------------------------
Abstract:
Floods are among the most frequent natural disasters, causing loss of life and significant economic and environmental damage, with direct impacts on agriculture, urban infrastructure, and transportation networks. Therefore, it is crucial to accurately and efficiently identify flooded areas in the aftermath of such events. Synthetic Aperture Radar (SAR) imagery plays a vital role in this process, as water surfaces reflect less microwave energy compared to land due to their smooth texture and low surface roughness. In this study, we present a multimodal fusion strategy that enhances the existing model by Turkmenli et al. [1] through the integration of fine-tuned histograms and Deep Neural Networks (DNNs) for improved flood mapping. Specifically, we introduce fine-tuned histogram extraction layers designed for SAR data, which are integrated into Deep Segmentation Neural Networks (DSNNs). The model was tested on two real SAR datasets, with cross-dataset validation using an external cohort, representing a second innovation in our approach. Experimental results demonstrate that our model, with fine-tuned histogram layers, outperforms previous approaches by up to 4% in intersection over union (IoU) and provides a comprehensive evaluation through metrics such as Precision, Recall, Average Precision (AP), Mean Average Precision (mAP), False Positive Rate (FPR), and Mean Average Recall (mAR). Importantly, these improvements come with minimal additional learnable parameters. The code for this work will be made available at https://github.com/Mohsena1990/Enhanced-HistSegNet
@Raminmousa
@Machine_learn
@Paper4monry
Repost from Papers
با عرض سلام
مقاله ی زیر تماما نگارش شده و اماده سابمیت از دوستان کسی خواست نفرات ۲ تا ۴ اش خالی هست.
IEEE Geoscience and Remote Sensing Letter
Impact factor 4
CiteScore 7.6
------------------------------
Title: Enhanced-HisSegNet: An Enhanced Histagram Layered Segmentation Network for SAR Image-based Flood Segmentation
------------------------------
Abstract:
Floods are among the most frequent natural disasters, causing loss of life and significant economic and environmental damage, with direct impacts on agriculture, urban infrastructure, and transportation networks. Therefore, it is crucial to accurately and efficiently identify flooded areas in the aftermath of such events. Synthetic Aperture Radar (SAR) imagery plays a vital role in this process, as water surfaces reflect less microwave energy compared to land due to their smooth texture and low surface roughness. In this study, we present a multimodal fusion strategy that enhances the existing model by Turkmenli et al. [1] through the integration of fine-tuned histograms and Deep Neural Networks (DNNs) for improved flood mapping. Specifically, we introduce fine-tuned histogram extraction layers designed for SAR data, which are integrated into Deep Segmentation Neural Networks (DSNNs). The model was tested on two real SAR datasets, with cross-dataset validation using an external cohort, representing a second innovation in our approach. Experimental results demonstrate that our model, with fine-tuned histogram layers, outperforms previous approaches by up to 4% in intersection over union (IoU) and provides a comprehensive evaluation through metrics such as Precision, Recall, Average Precision (AP), Mean Average Precision (mAP), False Positive Rate (FPR), and Mean Average Recall (mAR). Importantly, these improvements come with minimal additional learnable parameters. The code for this work will be made available at https://github.com/Mohsena1990/Enhanced-HistSegNet
@Raminmousa
@Machine_learn
@Paper4monry
با عرض سلام دوستان اين گروه ها كامل پرشده بجز بخش طبقه بندي پزشكي كه نفر پنجم يه گروه جا هست .
@Raminmousa
Understanding_LLMs_A_Comprehensive_Overview_from_Training_to_Inference.pdf9.92 KB
Repost from Github LLMs
LLM based Multi-Agent methods
🖥 Github: https://github.com/AgnostiqHQ/multi-agent-llm
📕 Paper: https://arxiv.org/abs/2409.12618v1
🤗 Dataset: https://paperswithcode.com/dataset/hotpotqa
✅https://t.me/deep_learning_proj
با عرض سلام دوستان اين گروه ها كامل پرشده بجز بخش طبقه بندي پزشكي كه نفر دوم و پنجم يه گروه جا هست .
Forecasting in Economics, Business, Finance and Beyond
📚 Book
@Machine_learn
🖥 Awesome LLM Strawberry (OpenAI o1)
▪ Github
✅@Machine_learn
Repost from Papers
با عرض سلام جايگاه هاي پيپر زير را جهت واگذاري در نظر داريم.
Title: Computation-Efficient Neural Network Based on
Model’s Saliency Performance
Abstract
The increasing complexity of deep neural networks has resulted in significant computational overhead, limiting their deployment in real-time and resource-constrained environments. While model pruning and quantization have been explored extensively, they often do not consider the model's saliency performance, which reflects how critical specific neurons or layers are to the overall task. This paper presents a Computation-Efficient Neural Network framework that uses model saliency to identify and preserve the most critical components of the network while reducing the computational cost by pruning less significant elements. The approach computes the saliency score of each layer or neuron, evaluates its contribution to the model's performance, and prunes the less salient parts without significant accuracy loss. By focusing on saliency, this method maintains robust performance while reducing both memory and computational demands. Experiments on image classification tasks demonstrate the effectiveness of this saliency-based pruning in achieving high efficiency with minimal performance degradation.
Keyword: Deep Learning Model Compression,
Convolutional Neural Networks
Medical Image Classification,
Quantization-Aware Training,
Computational Efficiency
* Submission: Nature Springer
** This paper is written by two PhD students from top universities in the USA.
*** A one-page summary is attached.
✅@reza_alvandi
@Machine_learn
@Paper4money
Repost from Papers
Title: Computation-Efficient Neural Network Based on
Model’s Saliency Performance
Abstract
The increasing complexity of deep neural networks has resulted in significant computational overhead, limiting their deployment in real-time and resource-constrained environments. While model pruning and quantization have been explored extensively, they often do not consider the model's saliency performance, which reflects how critical specific neurons or layers are to the overall task. This paper presents a Computation-Efficient Neural Network framework that uses model saliency to identify and preserve the most critical components of the network while reducing the computational cost by pruning less significant elements. The approach computes the saliency score of each layer or neuron, evaluates its contribution to the model's performance, and prunes the less salient parts without significant accuracy loss. By focusing on saliency, this method maintains robust performance while reducing both memory and computational demands. Experiments on image classification tasks demonstrate the effectiveness of this saliency-based pruning in achieving high efficiency with minimal performance degradation.
Keyword: Deep Learning Model Compression,
Convolutional Neural Networks
Medical Image Classification,
Quantization-Aware Training,
Computational Efficiency
* Submission: Nature Springer
** This paper is written by two PhD students from top universities in the USA.
*** A one-page summary is attached.
✅@reza_alvandi
@Machine_learn
@Paper4money
Repost from Papers
Title: Computation-Efficient Neural Network Based on
Model’s Saliency Performance
Abstract
The increasing complexity of deep neural networks has resulted in significant computational overhead, limiting their deployment in real-time and resource-constrained environments. While model pruning and quantization have been explored extensively, they often do not consider the model's saliency performance, which reflects how critical specific neurons or layers are to the overall task. This paper presents a Computation-Efficient Neural Network framework that uses model saliency to identify and preserve the most critical components of the network while reducing the computational cost by pruning less significant elements. The approach computes the saliency score of each layer or neuron, evaluates its contribution to the model's performance, and prunes the less salient parts without significant accuracy loss. By focusing on saliency, this method maintains robust performance while reducing both memory and computational demands. Experiments on image classification tasks demonstrate the effectiveness of this saliency-based pruning in achieving high efficiency with minimal performance degradation.
Keyword: Deep Learning Model Compression,
Convolutional Neural Networks
Medical Image Classification,
Quantization-Aware Training,
Computational Efficiency
* Submission: Nature Springer
** This paper is written by two PhD students from top universities in the USA.
*** A one-page summary is attached.
@reza_alvandi
Repost from Papers
با عرض سلام موضوع سری زمانی که می خواهیم کار کنیم. پیش بینی عدم نقد شوندگی crypto market هستش. برای این منظور ۵ ارز Btc, ETH, LTc,Doge, and BNB رو در نظر داریم.
مقالات مرتبط
۱-https://edoc.hu-berlin.de/handle/18452/29340
2-https://link.springer.com/article/10.1007/s00521-020-05129-6
3-https://www.researchgate.net/publication/382148896_Forecasting_of_Bitcoin_illiquidity_using_high-dimensional_features_and_hybrid_CNNRNN_Models
4-https://www.researchgate.net/publication/380570068_Forecasting_of_Bitcoin_Prices_Using_Hashrate_Features_Wavelet_and_Deep_Stacking_approach
هزینه های اجاره ی سرور، جمع اوری داده ها و کدنویسی برای نفر دوم ۱۵ میلیون، نفر سوم ۱۲ و نفر ۴ ام ۱۰ میافته. هر شخص هم تسک مربوط به خودش رو باید انجام بده.
کسی نیاز داشت به بنده پیام بده
@Raminmousa
🖥 An Introduction to Tensors for Students
of Physics and Engineering
▪ Book
@Machine_learn
🖥 UNet 3+ Implementation in TensorFlow
This article presents an implementation of the UNet 3+ architecture using TensorFlow.
UNet 3+ extends the classic UNet and UNet++ architecture.
This article looks at each block of the UNet 3+ architecture and explains how they work and what helps improve the performance of the model.
Understanding these blocks will help us understand the mechanisms behind UNet 3+ and how it effectively tackles tasks such as image segmentation or other pixel-wise prediction tasks.
https://idiotdeveloper.com/unet-3-plus-implementation-in-tensorflow/
@Machine_learn
现已上线!2025 年 Telegram 研究 — 年度关键洞察 
