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 24 517 名订阅者,在 教育 类别中位列第 8 056,并在 伊朗 地区排名第 13 757 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 24 517 名订阅者。
根据 24 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 -165,过去 24 小时变化为 -3,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 6.78%。内容发布后 24 小时内通常能获得 1.90% 的反应,占订阅者总量。
- 帖子覆盖: 每篇帖子平均可获得 1 663 次浏览,首日通常累积 465 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 25 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。
24 517
订阅者
-324 小时
-477 天
-16530 天
帖子存档
نفر ۴ از مقاله زیر قابل اضافه شدن میباشد.
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Title: PKG-LLM: A Framework for Predicting GAD and MDD Using Knowledge Graphs and Large Language Models in Cognitive Neuroscience
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Abstract:
Purpose:
The purpose of this study is to develop and evaluate PKG-LLM, a knowledge graph framework designed for cognitive neuroscience applications. The aim is to enhance the prediction of relationships between neurological entities and to improve named entity recognition (NER) and relation extraction (RE) from complex neurological datasets. By leveraging GPT-4 and expert review, we aim to demonstrate the framework’s ability to outperform traditional models in terms of precision, recall, and F1-score, and to provide valuable insights for clinical and research applications in neuroscience.
Method:
The evaluation of PKG-LLM involved two main tasks: relation extraction (RE) and named entity recognition (NER). In both tasks, we utilized GPT-4 to process the data and compute metrics such as precision, recall, and F1-score. Additionally, we integrated an expert review process, where neurologists and domain experts reviewed the extracted relationships and entities, improving the final performance metrics. The model's performance was compared against StrokeKG and Heart Failure KG. Moreover, PKG-LLM was assessed for link prediction using metrics like Mean Rank (MR), Mean Reciprocal Rank (MRR), and Precision at K (P@K). The model was benchmarked against other link prediction models, including TransE, RotatE, DistMult, ComplEx, ConvE, and HolmE.
Findings:
PKG-LLM demonstrated competitive performance in both relation extraction and named entity recognition tasks. In its traditional form, PKG-LLM achieved a precision of 75.45%, recall of 78.60%, and F1-score of 76.89% in relation extraction, which improved to 82.34%, 85.40%, and 83.85% after expert review. In named entity recognition, the traditional model scored 73.42% precision, 76.30% recall, and 74.84% F1-score, improving to 81.55%, 84.60%, and 82.99% after expert review. For link prediction, PKG-LLM achieved an MRR of 0.396, P@1 of 0.385, and P@10 of 0.531, placing it in a competitive range when compared to models like TransE, RotatE, and ConvE.
Journal:
http://www.comsis.org/
http://www.math.md/en/publications/csjm/
https://journal.info.unlp.edu.ar
https://bcn.iums.ac.ir/
@Raminmousa
@Machine_learn
https://t.me/+SP9l58Ta_zZmYmY0
Are They the Same? Exploring Visual Correspondence Shortcomings of Multimodal LLMs
🖥 Github: https://github.com/zhouyiks/CoLVA/tree/main
📕 Paper: https://arxiv.org/pdf/2501.04670v1.pdf
⭐️ Dataset: https://paperswithcode.com/dataset/bdd100k
@Machine_learn
🌟 🌟 OuteTTS-0.2-500M
# Install from PyPI
pip install outetts
# Interface Usage
import outetts
# Configure the model
model_config = outetts.HFModelConfig_v1(
model_path="OuteAI/OuteTTS-0.2-500M",
language="en", # Supported languages in v0.2: en, zh, ja, ko
)
# Initialize the interface
interface = outetts.InterfaceHF(model_version="0.2", cfg=model_config)
# Optional: Create a speaker profile (use a 10-15 second audio clip)
speaker = interface.create_speaker(
audio_path="path/to/audio/file",
transcript="Transcription of the audio file."
)
# Optional: Load speaker from default presets
interface.print_default_speakers()
speaker = interface.load_default_speaker(name="male_1")
output = interface.generate(
text="%Prompt Text%%.",
temperature=0.1,
repetition_penalty=1.1,
max_length=4096,
# Optional: Use a speaker profile
speaker=speaker,
)
# Save the synthesized speech to a file
output.save("output.wav")
🟡Demo
🖥GitHub
@Machine_learnRepost from Papers
مقاله زیر نفرات ۲ تا ۴ قابل واگذاری می باشد
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Title: PKG-LLM: A Framework for Predicting GAD and MDD Using Knowledge Graphs and Large Language Models in Cognitive Neuroscience
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Abstract:
Purpose:
The purpose of this study is to develop and evaluate PKG-LLM, a knowledge graph framework designed for cognitive neuroscience applications. The aim is to enhance the prediction of relationships between neurological entities and to improve named entity recognition (NER) and relation extraction (RE) from complex neurological datasets. By leveraging GPT-4 and expert review, we aim to demonstrate the framework’s ability to outperform traditional models in terms of precision, recall, and F1-score, and to provide valuable insights for clinical and research applications in neuroscience.
Method:
The evaluation of PKG-LLM involved two main tasks: relation extraction (RE) and named entity recognition (NER). In both tasks, we utilized GPT-4 to process the data and compute metrics such as precision, recall, and F1-score. Additionally, we integrated an expert review process, where neurologists and domain experts reviewed the extracted relationships and entities, improving the final performance metrics. The model's performance was compared against StrokeKG and Heart Failure KG. Moreover, PKG-LLM was assessed for link prediction using metrics like Mean Rank (MR), Mean Reciprocal Rank (MRR), and Precision at K (P@K). The model was benchmarked against other link prediction models, including TransE, RotatE, DistMult, ComplEx, ConvE, and HolmE.
Findings:
PKG-LLM demonstrated competitive performance in both relation extraction and named entity recognition tasks. In its traditional form, PKG-LLM achieved a precision of 75.45%, recall of 78.60%, and F1-score of 76.89% in relation extraction, which improved to 82.34%, 85.40%, and 83.85% after expert review. In named entity recognition, the traditional model scored 73.42% precision, 76.30% recall, and 74.84% F1-score, improving to 81.55%, 84.60%, and 82.99% after expert review. For link prediction, PKG-LLM achieved an MRR of 0.396, P@1 of 0.385, and P@10 of 0.531, placing it in a competitive range when compared to models like TransE, RotatE, and ConvE.
Journal:
http://www.comsis.org/
http://www.math.md/en/publications/csjm/
https://journal.info.unlp.edu.ar
https://bcn.iums.ac.ir/
@Raminmousa
@Machine_learn
https://t.me/+SP9l58Ta_zZmYmY0
Deep_Learning_Hyperparameter_tuning_Regularization_and_Optimization.pdf2.39 MB
Repost from Papers
مقاله زیر نفرات ۲ تا ۴ قابل واگذاری می باشد
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Title: PKG-LLM: A Framework for Predicting GAD and MDD Using Knowledge Graphs and Large Language Models in Cognitive Neuroscience
🔸🔸🔸🔸🔸🔸🔸🔸🔸
Abstract:
Purpose:
The purpose of this study is to develop and evaluate PKG-LLM, a knowledge graph framework designed for cognitive neuroscience applications. The aim is to enhance the prediction of relationships between neurological entities and to improve named entity recognition (NER) and relation extraction (RE) from complex neurological datasets. By leveraging GPT-4 and expert review, we aim to demonstrate the framework’s ability to outperform traditional models in terms of precision, recall, and F1-score, and to provide valuable insights for clinical and research applications in neuroscience.
Method:
The evaluation of PKG-LLM involved two main tasks: relation extraction (RE) and named entity recognition (NER). In both tasks, we utilized GPT-4 to process the data and compute metrics such as precision, recall, and F1-score. Additionally, we integrated an expert review process, where neurologists and domain experts reviewed the extracted relationships and entities, improving the final performance metrics. The model's performance was compared against StrokeKG and Heart Failure KG. Moreover, PKG-LLM was assessed for link prediction using metrics like Mean Rank (MR), Mean Reciprocal Rank (MRR), and Precision at K (P@K). The model was benchmarked against other link prediction models, including TransE, RotatE, DistMult, ComplEx, ConvE, and HolmE.
Findings:
PKG-LLM demonstrated competitive performance in both relation extraction and named entity recognition tasks. In its traditional form, PKG-LLM achieved a precision of 75.45%, recall of 78.60%, and F1-score of 76.89% in relation extraction, which improved to 82.34%, 85.40%, and 83.85% after expert review. In named entity recognition, the traditional model scored 73.42% precision, 76.30% recall, and 74.84% F1-score, improving to 81.55%, 84.60%, and 82.99% after expert review. For link prediction, PKG-LLM achieved an MRR of 0.396, P@1 of 0.385, and P@10 of 0.531, placing it in a competitive range when compared to models like TransE, RotatE, and ConvE.
Journal:
http://www.comsis.org/
http://www.math.md/en/publications/csjm/
https://journal.info.unlp.edu.ar
https://bcn.iums.ac.ir/
@Raminmousa
@Machine_learn
https://t.me/+SP9l58Ta_zZmYmY0
Mathematical Foundations of Machine Learning
📓 book
@Machine_learn
Repost from Papers
با عرض سلام مقاله زیر در مرحله major revision میباشد. نفر ۴ ام از این مقاله قابل اضافه کردن.
Abstract
Breast cancer stands as a prevalent cause of fatality among females on a global scale, with
prompt detection playing a pivotal role in diminishing mortality rates. The utilization of
ultrasound scans in the BUSI dataset for medical imagery pertaining to breast cancer has
exhibited commendable segmentation outcomes through the application of UNet and UNet++
networks. Nevertheless, a notable drawback of these models resides in their inattention towards
the temporal aspects embedded within the images. This research endeavors to enrich the
UNet++ architecture by integrating LSTM layers and self-attention mechanisms to exploit
temporal characteristics for segmentation purposes. Furthermore, the incorporation of a
Multiscale Feature Extraction Module aims to grasp varied scale features within the UNet++.
Through the amalgamation of our proposed methodology with data augmentation on the BUSI
with GT dataset, an accuracy rate of 98.88%, specificity of 99.53%, precision of 95.34%,
sensitivity of 91.20%, F1-score of 93.74, and Dice coefficient of 92.74% are achieved. These
findings demonstrate competitiveness with cutting-edge techniques outlined in existing
literature.
Keywords: Attention mechanisms, BUSI dataset, Deep Learning, Feature Extraction,
Multi-Scale features
دوستانی که نیاز دارن به ایدی بنده پیام بدن.
@Raminmousa
@Machine_learn
https://t.me/+SP9l58Ta_zZmYmY0
🌟 DepthLab
# Clone repo
git clone https://github.com/Johanan528/DepthLab.git
cd DepthLab
# Create conda env
conda env create -f environment.yaml
conda activate DepthLab
# Run inference
cd scripts
bash infer.sh
🟡Arxiv
🖥GitHub
@Machine_learnAre They the Same? Exploring Visual Correspondence Shortcomings of Multimodal LLMs
🖥 Github: https://github.com/zhouyiks/CoLVA/tree/main
📕 Paper: https://arxiv.org/pdf/2501.04670v1.pdf
🌟 Dataset: https://paperswithcode.com/dataset/bdd100k
@Machine_learn
با عرض سلام تمامي كار هاي مشترك تموم شدن و فقط اين كار باقي مونده....!
@Raminmousa
با عرض سلام از اين تيم ها فقط مورد ٢ و ٣ باقي مونده مابقي تيم ها كامل شدند....!
📑 Advances of the recent data-driven paradigm shift in medicine and healthcare: From machine learning to deep learning
📎 Study the paper
@Machine_learn
现已上线!2025 年 Telegram 研究 — 年度关键洞察 
