🏠 홈
벤치마크
📊 모든 벤치마크 🦖 공룡 v1 🦖 공룡 v2 ✅ 할 일 목록 앱 🎨 창의적인 자유 페이지 🎯 FSACB - 궁극의 쇼케이스 🌍 번역 벤치마크
모델
🏆 톱 10 모델 🆓 무료 모델 📋 모든 모델 ⚙️ 킬로 코드 모드
리소스
💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
📖
용어

Upper Confidence Bound (UCB)

Acquisition function that adds an exploration term, proportional to the model's uncertainty, to the predicted mean, allowing explicit control of the exploration-exploitation trade-off via a parameter.

📖
용어

Probability of Improvement (PI)

Acquisition function that calculates the probability that a candidate point will improve the current best result, tending to favor exploitation of areas already known to be promising.

📖
용어

Kernel (or Covariance Function)

Function that defines the similarity between two points in the search space and determines the smoothing properties of the Gaussian process, crucial for the quality of the surrogate model.

📖
용어

Multi-Objective Optimization

Extension of Bayesian optimization aimed at simultaneously optimizing multiple conflicting objectives, producing a Pareto front of non-dominated solutions.

📖
용어

Parallel Optimization

Variant of Bayesian optimization that proposes multiple points to evaluate simultaneously, accelerating the process by leveraging distributed computing resources.

📖
용어

Kernel Hyperparameter

Parameters of the Gaussian process kernel (such as length scale or variance) that define the correlation structure of the surrogate model and are often optimized internally.

📖
용어

Latin Hypercube Sampling Initialization

Strategy for generating the first evaluation points that ensures homogeneous coverage of the search space, reducing the initial bias of the surrogate model.

📖
용어

Trust Region Based Optimization

Approach that restricts the search to a trust region around the current best solution, dynamically adjusting it to accelerate local convergence.

📖
용어

Noisy Objective Function

Evaluation function whose results are affected by random noise, requiring adaptations of the Gaussian process and acquisition functions to handle uncertainty.

📖
용어

Automated Hyperparameter Tuning

Process that uses algorithms such as Bayesian optimization to automatically find the combination of hyperparameters that optimizes the performance of a machine learning model.

🔍

결과를 찾을 수 없습니다