A-Z of Machine Learning and Computer Vision Terms

  • This is some text inside of a div block.
  • This is some text inside of a div block.
  • This is some text inside of a div block.
  • This is some text inside of a div block.
  • This is some text inside of a div block.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
A
A
AI Agent
AI Agent
AI Assistants
AI Assistants
AI Assisted Labeling
AI Assisted Labeling
Active Learning
Active Learning
Algorithm
Algorithm
Anchor Boxes
Anchor Boxes
Anomaly Detection
Anomaly Detection
Artificial Intelligence (AI)
Artificial Intelligence (AI)
Attribute
Attribute
B
B
Backpropagation
Backpropagation
Bagging
Bagging
Batch
Batch
Batch Normalization
Batch Normalization
Bayesian Network
Bayesian Network
Bias
Bias
Big Data
Big Data
Binary Classification
Binary Classification
Blur
Blur
Boosting
Boosting
Bounding Box
Bounding Box
C
C
COCO
COCO
Calibration
Calibration
Calibration Curve
Calibration Curve
Canonical Correlation Analysis (CCA)
Canonical Correlation Analysis (CCA)
Case-Based Reasoning
Case-Based Reasoning
Chain of Thought (CoT)
Chain of Thought (CoT)
ChatGPT
ChatGPT
Chi-Squared Automatic Interaction Detection (CHAID)
Chi-Squared Automatic Interaction Detection (CHAID)
Class Boundary
Class Boundary
Class Boundary (Statistics & Machine Learning)
Class Boundary (Statistics & Machine Learning)
Class Imbalance
Class Imbalance
Clustering
Clustering
Collaborative Filtering
Collaborative Filtering
Computer Vision
Computer Vision
Computer Vision Model
Computer Vision Model
Concept Drift
Concept Drift
Conditional Random Field (CRF)
Conditional Random Field (CRF)
Confusion Matrix
Confusion Matrix
Constrained Clustering
Constrained Clustering
Contrastive Learning
Contrastive Learning
Convolutional Neural Network (CNN)
Convolutional Neural Network (CNN)
Convolutional Neural Networks (CNNs)
Convolutional Neural Networks (CNNs)
Cross-Validation
Cross-Validation
D
D
DICOM
DICOM
Data Approximation
Data Approximation
Data Augmentation
Data Augmentation
Data Drift
Data Drift
Data Error
Data Error
Data Mining
Data Mining
Data Operations
Data Operations
Data Pre-processing
Data Pre-processing
Data Quality
Data Quality
Dataset
Dataset
Decision Boundary
Decision Boundary
Decision List
Decision List
Decision Stump
Decision Stump
Decision Tree
Decision Tree
Deep Learning
Deep Learning
Deep Neural Networks
Deep Neural Networks
Dimensionality Reduction
Dimensionality Reduction
Dropout
Dropout
Dynamic and Event-Based Classifications
Dynamic and Event-Based Classifications
E
E
Edge Cases
Edge Cases
Edge Computing
Edge Computing
Edge Detection
Edge Detection
Elastic Net
Elastic Net
Embedding Spaces
Embedding Spaces
Ensemble Learning
Ensemble Learning
Epoch
Epoch
Expectation-Maximization Algorithm (EM)
Expectation-Maximization Algorithm (EM)
Extreme Learning Machine
Extreme Learning Machine
F
F
F1 Score
F1 Score
FP-Growth Algorithm
FP-Growth Algorithm
Factor Analysis
Factor Analysis
False Positive Rate
False Positive Rate
Feature
Feature
Feature Engineering
Feature Engineering
Feature Extraction
Feature Extraction
Feature Hashing
Feature Hashing
Feature Learning
Feature Learning
Feature Scaling
Feature Scaling
Feature Selection
Feature Selection
Feature Vector
Feature Vector
Few-shot Learning
Few-shot Learning
Fisher’s Linear Discriminant
Fisher’s Linear Discriminant
Foundation Models
Foundation Models
Frame Rate
Frame Rate
Frames Per Second (FPS)
Frames Per Second (FPS)
Fully Connected Layer
Fully Connected Layer
Fuzzy Logic
Fuzzy Logic
G
G
Generative Adversarial Network (GAN)
Generative Adversarial Network (GAN)
Generative Adversarial Networks
Generative Adversarial Networks
Generative Pre-Trained Transformer
Generative Pre-Trained Transformer
C

Clustering

Clustering is an unsupervised learning technique that involves grouping a set of data points into clusters such that points in the same cluster are more similar to each other than to points in other clusters​. Unlike classification, clustering operates on unlabeled data – the algorithm tries to discover inherent groupings or structure in the data without any ground truth labels. The goal is to maximize intra-cluster similarity (data points within a cluster should be as alike as possible) and maximize inter-cluster difference (distinct clusters should be well separated or different in characteristics).A classic example is clustering customers based on their purchase behavior: the algorithm might find one cluster of customers who buy mainly baby products, another cluster who buy luxury items, and so on – without having been told what those groups are beforehand. The “similarity” is defined via a distance or similarity measure (Euclidean distance is common for numeric data, but other measures or learned embeddings can be used). There are many clustering algorithms, each with different assumptions about cluster shape or formation: K-means clustering assumes clusters are roughly spherical in the feature space and partitions data into $k$ clusters by iteratively assigning points to the nearest cluster centroid and updating centroids; hierarchical clustering builds a tree of clusters by either successively merging the closest clusters (agglomerative) or splitting clusters (divisive), which allows one to choose a clustering at any level of granularity; DBSCAN defines clusters as areas of high density and can find arbitrarily shaped clusters while marking outliers as noise (it’s good for datasets with irregular cluster shapes); Gaussian mixture models assume data is generated from a mixture of Gaussian distributions and use statistical inference (EM algorithm) to soft-cluster points. Despite different approaches, the common theme is that clustering algorithms try to capture the natural structure in data.Clustering is often used for exploratory data analysis – to discover patterns that weren’t immediately apparent. For example, in biology, gene expression data might be clustered to find groups of genes with similar expression profiles (perhaps indicating co-regulation). In image processing, one might cluster pixel colors to compress images (color quantization) or cluster images in an unsupervised way to organize a photo collection by content. It’s also used in anomaly detection (points that don’t fit well into any cluster can be considered anomalies). One challenge with clustering is evaluating the results: since there are no true labels, validation uses metrics like silhouette score or Davies–Bouldin index (which assess cohesion and separation of clusters), or one uses domain knowledge to interpret clusters. Another challenge is that clustering can be sensitive to scaling of features and the choice of distance metric. Often, some preprocessing (like PCA for dimensionality reduction or feature normalization) is done to make clustering more effective. Overall, clustering is a powerful tool to let the data speak for itself by revealing potential groupings that can lead to insights or serve as a preprocessing step for other tasks (e.g., cluster then classify, or initialize labels via clustering).

Explore Our Products

Lightly One

Data Selection & Data Viewer

Get data insights and find the perfect selection strategy

Learn More

Lightly Train

Self-Supervised Pretraining

Leverage self-supervised learning to pretrain models

Learn More

Lightly Edge

Smart Data Capturing on Device

Find only the most valuable data directly on devide

Learn More

Ready to Get Started?

Experience the power of automated data curation with Lightly

Learn More