Adrian Spataru & Bohdan Andrusyak
The pitfalls of Deep Learning - When Neural Networks are not the solution
#1about 2 minutes
Defining classical machine learning vs deep learning
Classical machine learning relies on manual feature extraction, whereas deep learning models automate this process to find representations directly from data.
#2about 3 minutes
Highlighting successful applications of deep learning
Deep learning excels in complex domains like self-driving cars, language translation, and music generation due to its powerful representation learning capabilities.
#3about 3 minutes
Examining notable failures of deep learning models
Real-world deep learning failures include biased facial recognition systems, contextual mistranslations, and pseudoscientific claims about predicting personal traits.
#4about 6 minutes
The critical role of data quantity and quality
Deep learning models require vast amounts of high-quality, relevant data to learn effective features, as insufficient or poor data leads to unreliable performance.
#5about 3 minutes
Why tree-based models often outperform deep learning on tabular data
For structured tabular data common in business, tree-based models like LightGBM and XGBoost frequently outperform deep learning due to effective feature engineering.
#6about 4 minutes
The challenge of model explainability in deep learning
Deep learning's automatic feature extraction creates black-box models, making it difficult to understand decision-making compared to interpretable classical models like decision trees.
#7about 2 minutes
Navigating model complexity and production engineering costs
Highly complex models, like the Netflix Prize winner, can be impractical to deploy due to high engineering costs and resource requirements.
#8about 4 minutes
The significant resource and financial cost of training
Training state-of-the-art deep learning models requires immense computational resources, potentially costing millions of dollars and making it inaccessible for many organizations.
#9about 4 minutes
Strategies to overcome deep learning limitations
Techniques like transfer learning, emerging tabular deep learning methods, and interpretability tools like LIME and SHAP help mitigate issues of data, cost, and explainability.
#10about 1 minute
Deciding when to choose classical machine learning
Before adopting deep learning, evaluate if your problem involves small, tabular, or low-quality data, as classical machine learning may offer a more practical solution.
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