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Let's Get Activated! Why Non-Linear Activation Matters
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Let's get RE(a)L, U!
This research paper explores the impact of different activation functions, specifically ReLU and L-ReLU, on the performance of deep learning models. The authors investigate how the choice of activation function, along with factors like the number of parameters and the shape of the model architecture, influence model accuracy across various data domains (continuous, categorical with and without transfer learning). The study concludes that L-ReLU is more effective than ReLU when the number of parameters is relatively small, while ReLU generally performs better with larger models. The paper also highlights the importance of considering the specific data domain and the use of pre-trained models for transfer learning when selecting the most suitable activation function.
Read more: https://github.com/christianversloot/machine-learning-articles/blob/main/why-nonlinear-activation-functions-improve-ml-performance-with-tensorflow-example.md
71 ตอน
Let's Get Activated! Why Non-Linear Activation Matters
OVERFIT: AI, Machine Learning, and Deep Learning Made Simple
Fetch error
Hmmm there seems to be a problem fetching this series right now. Last successful fetch was on November 09, 2024 13:09 (
What now? This series will be checked again in the next day. If you believe it should be working, please verify the publisher's feed link below is valid and includes actual episode links. You can contact support to request the feed be immediately fetched.
Manage episode 447355898 series 3605861
Let's get RE(a)L, U!
This research paper explores the impact of different activation functions, specifically ReLU and L-ReLU, on the performance of deep learning models. The authors investigate how the choice of activation function, along with factors like the number of parameters and the shape of the model architecture, influence model accuracy across various data domains (continuous, categorical with and without transfer learning). The study concludes that L-ReLU is more effective than ReLU when the number of parameters is relatively small, while ReLU generally performs better with larger models. The paper also highlights the importance of considering the specific data domain and the use of pre-trained models for transfer learning when selecting the most suitable activation function.
Read more: https://github.com/christianversloot/machine-learning-articles/blob/main/why-nonlinear-activation-functions-improve-ml-performance-with-tensorflow-example.md
71 ตอน
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