This video provides an intuitive and logical explanation of how neural networks can generate learning and exhibit artificial intelligence.
Neural networks, represented by circles and connected lines, learn by receiving electric stimuli from other neurons, processing them, and generating responses.
Understanding neural networks is essential to comprehend how the human brain functions and how AI can be developed.
🧠 Neurons in the brain receive and process stimuli, forming connections and improving over time.
💡 Learning is a biological process in the brain that takes time, but with practice, neurons reinforce connections and create shortcuts, leading to muscle memory.
🌐 Artificial attempts to simulate this process have been made using electrical circuits and computational structures.
💡 In everyday decision-making, we consider multiple factors such as what we see, know, and believe.
💻 Neural networks can simulate decision-making using a computational process.
🧮 Neural networks use input factors, represented as 1 or 0, and a threshold value to make decisions.
💡 Neural networks use a threshold to make decisions based on input factors.
🔍 By assigning weights to input factors, neural networks prioritize certain factors over others.
💰 Increasing the weight of the factor related to money makes it more influential in decision-making.
🧠 Perceptors are the building blocks of neural networks.
⚖️ The decision-making process becomes more complex with multiple layers of perceptors.
💡 Neural networks enable the ability to make more complex decisions.
🧠 Neural networks are composed of layers that process input from the senses to make decisions.
👀 The initial layers of a neural network focus on basic features, like lines and shapes, while later layers combine these features to recognize more complex patterns.
⚙️ The challenges with neural networks include the manual adjustment of parameters and the volatility of perceptrons.
🧠 Neural networks are complex systems that can be influenced by small parameter changes.
💡 Having realistic decision-making in neural networks can help control the impact of parameter changes.
🌍 Future videos will discuss how these problems were solved and how neural networks evolved.
Lenguaje corporal: 21 Gestos y sus significados
Immunologie - les Cellules de l'Immunité Innée
Cultures, Subcultures, and Countercultures: Crash Course Sociology #11
The difference between lace front 13*6 & lace front 13*4
How to Find a Career You Genuinely Love
Rapat Koordinasi Pengendalian Inflasi Daerah Tahun 2023