Perceptron
Perceptron is a type of artificial neural network invented in 1957 by Frank Rosenblatt. It is a form of linear classifier, meaning that it makes its predictions based on a linear predictor function combining a set of weights with the feature vector. The concept of the perceptron, based on the neuron model, marks one of the earliest attempts to mimic the process of human learning in a machine, laying foundational work for the development of modern machine learning and artificial intelligence.
Overview
A perceptron takes several binary inputs, \(x_1, x_2, ..., x_n\), and produces a single binary output. In its simplest form, the perceptron uses a "weighted sum" of its input features, and passes this sum through a step function to produce the output. The weights, \(w_1, w_2, ..., w_n\), are real numbers expressing the importance of the respective inputs to the output. The perceptron updates its weights as it learns from training data, adjusting them using the perceptron learning rule to minimize the difference between the predicted and actual outputs.
Mathematical Model
The operation of a perceptron can be described by the formula: \[ f(x) = \begin{cases} 1 & \text{if } w \cdot x + b > 0 \\ 0 & \text{otherwise} \end{cases} \] where: - \(f(x)\) is the output of the perceptron, - \(w\) is the vector of weights, - \(x\) is the vector of inputs, - \(b\) is the bias, a constant that helps the model in a way that it can fit best for the given data.
Learning Rule
The perceptron learning rule is a simple algorithm used to update the weights. After presenting an input vector, if the output does not match the expected result, the weights are adjusted according to the formula: \[ w_{new} = w_{old} + \eta (y - \hat{y})x \] where: - \(w_{new}\) and \(w_{old}\) are the new and old values of the weights, respectively, - \(\eta\) is the learning rate, a small positive constant, - \(y\) is the correct output, and - \(\hat{y}\) is the predicted output.
Limitations
The original perceptron was quite limited in its capabilities. It is only capable of learning linearly separable patterns. In 1969, Marvin Minsky and Seymour Papert published a book titled "Perceptrons" which demonstrated the limitations of perceptrons, notably their inability to solve problems like the XOR problem. This criticism led to a significant reduction in interest and funding for neural network research. However, the invention of multi-layer perceptrons, or deep learning, overcame many of these limitations.
Applications
Despite its simplicity, the perceptron can be used for various binary classification tasks, such as spam detection, image classification, and sentiment analysis. When multiple perceptrons are combined, forming a multi-layer perceptron (MLP), they can solve complex problems that are not linearly separable.
See Also
| This article is a stub. You can help WikiMD by registering to expand it. |
Transform your life with W8MD's budget GLP-1 injections from $125.
W8MD offers a medical weight loss program to lose weight in Philadelphia. Our physician-supervised medical weight loss provides:
- Most insurances accepted or discounted self-pay rates. We will obtain insurance prior authorizations if needed.
- Generic GLP1 weight loss injections from $125 for the starting dose.
- Also offer prescription weight loss medications including Phentermine, Qsymia, Diethylpropion, Contrave etc.
NYC weight loss doctor appointments
Start your NYC weight loss journey today at our NYC medical weight loss and Philadelphia medical weight loss clinics.
- Call 718-946-5500 to lose weight in NYC or for medical weight loss in Philadelphia 215-676-2334.
- Tags:NYC medical weight loss, Philadelphia lose weight Zepbound NYC, Budget GLP1 weight loss injections, Wegovy Philadelphia, Wegovy NYC, Philadelphia medical weight loss, Brookly weight loss and Wegovy NYC
|
WikiMD's Wellness Encyclopedia |
| Let Food Be Thy Medicine Medicine Thy Food - Hippocrates |
Medical Disclaimer: WikiMD is not a substitute for professional medical advice. The information on WikiMD is provided as an information resource only, may be incorrect, outdated or misleading, and is not to be used or relied on for any diagnostic or treatment purposes. Please consult your health care provider before making any healthcare decisions or for guidance about a specific medical condition. WikiMD expressly disclaims responsibility, and shall have no liability, for any damages, loss, injury, or liability whatsoever suffered as a result of your reliance on the information contained in this site. By visiting this site you agree to the foregoing terms and conditions, which may from time to time be changed or supplemented by WikiMD. If you do not agree to the foregoing terms and conditions, you should not enter or use this site. See full disclaimer.
Credits:Most images are courtesy of Wikimedia commons, and templates, categories Wikipedia, licensed under CC BY SA or similar.
Translate this page: - East Asian
中文,
日本,
한국어,
South Asian
हिन्दी,
தமிழ்,
తెలుగు,
Urdu,
ಕನ್ನಡ,
Southeast Asian
Indonesian,
Vietnamese,
Thai,
မြန်မာဘာသာ,
বাংলা
European
español,
Deutsch,
français,
Greek,
português do Brasil,
polski,
română,
русский,
Nederlands,
norsk,
svenska,
suomi,
Italian
Middle Eastern & African
عربى,
Turkish,
Persian,
Hebrew,
Afrikaans,
isiZulu,
Kiswahili,
Other
Bulgarian,
Hungarian,
Czech,
Swedish,
മലയാളം,
मराठी,
ਪੰਜਾਬੀ,
ગુજરાતી,
Portuguese,
Ukrainian
Contributors: Prab R. Tumpati, MD