Course Content
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Accuracy Score
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Activation Function
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Algorithm
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Assignment Operator (Python)
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Artificial General Intelligence (AGI)
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Artificial Intelligence
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Artificial Narrow Intelligence (ANI)
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3 min
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Artificial Neural Network (ANN)
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Backpropagation
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Bias
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Bias-Variance Tradeoff
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Big Data
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Business Analyst (BA)
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Business Analytics (BA)
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Business Intelligence (BI)
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Categorical Variable
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Clustering
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Command Line
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Computer Vision
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Continuous Variable
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Cost Function
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Cross-Validation
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Data Analysis
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Data Analyst
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Data Science
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Data Scientist
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6 min
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Early Stopping
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Exploratory Data Analysis (EDA)
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False Negative
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False Positive
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Google Colaboratory
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Gradient Descent
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Hidden Layer
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Hyperparameter
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Image Recognition
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Imputation
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K-fold Cross Validation
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K-Means Clustering
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Linear Regression
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Logistic Regression
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Machine Learning Engineer (MLE)
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Mean
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Neural Network
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Notebook
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One-Hot Encoding
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Operand
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Operator (Python)
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Print Function (Python)
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Python
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Quantile
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Quartile
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Random Forest
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Recall
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Scalar
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55.
Snake Case
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56.
T-distribution
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T-test
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58.
Tableau
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59.
Target
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60.
Tensor
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61.
Tensor Processing Unit (TPU)
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62.
TensorBoard
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63.
TensorFlow
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64.
Test Loss
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65.
Time Series
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66.
Time Series Data
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67.
Test Set
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68.
Tokenization
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69.
Train Test Split
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70.
Training Loss
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71.
Training Set
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72.
Transfer Learning
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73.
True Negative (TN)
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1 min
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74.
True Positive (TP)
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75.
Type I Error
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76.
Type II Error
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77.
Underfitting
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78.
Undersampling
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79.
Univariate Analysis
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80.
Unstructured Data
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81.
Unsupervised Learning
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82.
Validation
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83.
Validation Loss
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84.
Vanishing Gradient Problem
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85.
Validation Set
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86.
Variable (Python)
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1 min
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87.
Variable Importances
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88.
Variance
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89.
Variational Autoencoder (VAE)
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90.
Weight
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91.
Word Embedding
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92.
X Variable
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93.
Y Variable
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94.
Z-Score
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1 min
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In binary classification, a true positive (TP) is one of the four possible outcomes when evaluating the performance of a classification model. These outcomes are based on comparing the model's predictions with the actual ground truth.
Here are the four possible outcomes in binary classification:
- True Positive (TP): The model correctly predicts the positive class when the true class is indeed positive.
- True Negative (TN): The model correctly predicts the negative class when the true class is indeed negative.
- False Positive (FP): The model incorrectly predicts the positive class when the true class is actually negative. This is also known as a Type I error.
- False Negative (FN): The model incorrectly predicts the negative class when the true class is actually positive. This is also known as a Type II error.
A true positive (TP) occurs when the model correctly identifies instances of the positive class. It means that the model successfully recognizes cases where the true class is positive, and it doesn't miss them or misclassify them as negative.
The terms true positive, true negative, false positive, and false negative are commonly used to calculate various performance metrics for classification models, such as accuracy, precision, recall, and F1 score. These metrics help assess the model's effectiveness in making correct predictions and avoiding misclassifications.