General
ML
Data Analysis
Data Visualizations
Deep learning
100

What type of machine learning involves training models on labeled data to make predictions or classifications?

Supervised learning

100

This ensemble learning method combines multiple decision trees to make predictions.

Random forest

100

This statistical measure indicates how spread out the values in a dataset are from the mean.

standard deviation

100

This type of chart is best for showing the composition of a whole and its parts.

Pie chart

100

This type of neural network is particularly effective for image recognition tasks.

CNN

200

This popular algorithm clusters data points into groups based on similarity without prior labeling.

K-means

200

This optimization algorithm is commonly used to minimize the loss function in neural networks.

Gradient descent

200

This technique is used to identify and remove observations that are significantly different from other observations in the dataset.

Outlier detection

200

This type of chart is used to show changes in one or more quantities over time, often with lines connecting data points.

Line Chart

200

This activation function outputs values between 0 and 1, often used in the output layer for binary classification.

Sigmoid

300

This measure of central tendency is highly sensitive to outliers in a dataset.

Mean

300

This technique involves training a model on a subset of data and validating it on the held-out portion.

Cross-validation

300

his technique is used to identify groups of similar data points within a dataset without prior labeling.

Clustering

300

This type of chart uses rectangular bars to show comparisons among categories.

Bar chart

300

This technique randomly turns off neurons during training to prevent overfitting.

Dropout

400

This term describes data that is collected at regular time intervals.

time-series

400

This metric measures the harmonic mean of precision and recall in binary classification.

F1-score

400

This type of analysis is used to understand the relationship between a dependent variable and one or more independent variables.

Regression

400

This common chart type uses vertical or horizontal bars to compare values across categories.

Bar Chart

400

This popular deep learning framework was developed by Google and is widely used for building neural networks.

TensorFlow

500

This phenomenon occurs when a model performs well on training data but poorly on new, unseen data.

overfitting

500

This algorithm finds the hyperplane that best separates classes in a high-dimensional space.

Support Vector Machine

500

This statistical phenomenon occurs when a model includes irrelevant predictors, potentially leading to decreased predictive power.

Overfitting

500

This chart uses dots to show the relationship between two variables.

Scatter Plot

500

This technique involves training a model on one task and then fine-tuning it on a related task.

Transfer learning

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