100% de satisfacción garantizada Inmediatamente disponible después del pago Tanto en línea como en PDF No estas atado a nada 4,6 TrustPilot
logo-home
Resumen

Summary Introduction to AI: Search Strategies, Decision-Making, and Uncertainty

Puntuación
-
Vendido
3
Páginas
15
Subido en
09-10-2024
Escrito en
2024/2025

English: This document serves as a guide for the “Introduction to AI” course, covering key topics like search strategies (Hill Climbing, Genetic Algorithms), adversarial search (Minimax, Alpha-Beta pruning), uncertainty, inference, and Bayesian Networks. It includes practical exercises to apply AI decision-making concepts. Nederlands: Dit document is een handleiding voor het vak “Inleiding in AI” en behandelt belangrijke onderwerpen zoals zoekstrategieën (Hill Climbing, genetische algoritmes), adversariële zoekopdrachten (Minimax, Alpha-Beta-pruning), onzekerheid, inferentie en Bayesiaanse netwerken. Het bevat praktische oefeningen om AI-besluitvormingsconcepten toe te passen.

Mostrar más Leer menos
Institución
Grado









Ups! No podemos cargar tu documento ahora. Inténtalo de nuevo o contacta con soporte.

Escuela, estudio y materia

Institución
Estudio
Grado

Información del documento

Subido en
9 de octubre de 2024
Número de páginas
15
Escrito en
2024/2025
Tipo
Resumen

Temas

Vista previa del contenido

LOCAL SEARCH (GENERAL) 03 UNCERTAINTY 12 (quote

SEARCH STRATEGIES 04-05 INFERENCE 13
Local search: Hill-Climbing, Simulated Annealing 04 Deductive / Inductive 13
Local search: Local Beam Search 05 Observation 13
Genetic Algorithms 05
POLYNOMIAL MODEL 14
DISCUSSION ASSIGNMENT: SEARLE 05 Measuring error of model 14

HILL CLIMBING (STEEPEST DESCENT) & GENETIC ALGORITHMS 06 TRAINING A MODEL 15
PRACTICAL: Hill Climbing (steepest descent) 06 Fitting vs. prediction 15
PRACTICAL: Genetic Algorithms 06

ADVERSARIAL SEARCH 07-08
Ordinary vs. Adversarial Search / Adversarial games 07
Minimax search (+ complexity) / Summary 07
Alpha-Beta pruning / Move ordering / Forward pruning 08
Heuristic strategies / Heuristic Alpha-Beta Tree Search 08
Transpositional tables / Monte Carlo Tree search 08

DEMO: GRID GAME 09-10

TWO-PLAYER ZERO-SUM GAMES 10

MINIMAX & A-B PRUNING PRACTICAL 11




ACTING UNDER UNCERTAINTY 16-22
Symbols and interpretation 16
Logic is insufficient / Perfect knowledge is not possible 16
Probability statements / Decision theory 16
Principle of Maximum Expected Utility (MEU) 16-17
Possible worlds (+ symbols and interpretation) 17
Definition of event / Computing (un)conditional probabilities 18
Random variables 18
Joint probability distribution 19
Complement of a proposition and its negation 19
Product rule / Bayes’s rule / Multivalued variables 19
Normalisation / Marginalisation 20
General form of procedure (+ space and time complexity) 21
(Conditional) independence 21
PRACTICAL: Quantifying uncertainty 22
Scaling up inference / Summary 22

BAYESIAN NETWORKS 23-27
Graphs, Networks / Path, trail, walk / Definition Bayesian Network 23
Constructing a Bayesian Network 24
Chain rule / Constructing a Bayesian Network 25
Size complexity Conditional Probability Tables (CPT) 26
Efficiency of representing CPT 26
Exact inference / Summary 27

DISCUSSION ASSIGNMENT: ETHICS 28-29

, LOCAL SEARCH (GENERAL




3




SEARCH STRATEGIES
STRATEGY COMMENTS PROBLEMS IMPROVEMENTS
Hill-Climbing ● Keeps track of only one current ● Local Maxima ● Allow for a limited number of sideways moves (if on plateau that
state (no backtracking) ● Plateaus (flat local is really a shoulder) (Higher success rate + Higher number of
If elevation = ● Does not look beyond the maximum or moves)
objective → immediate neighbours of the shoulder) ● Stochastic hill climbing: random selection between the uphill
Hill-Climbing current state (greedy) ● Ridges: Sequence of moves, with probability related to steepness.
If elevation = ● On each iteration moves to the local maxima that are ● First-choice hill climbing: random testing of successors until
cost → find neighboring state with highest not directly one is found that is better than the current state. Good strategy
the global value (steepest ascent) connected, Each local when testing all successors is costly
minimum or ● Terminates when a peak is maxima only has ● Random-restart hill climbing: do a number of hill-climbing
lowest valley reached (no neighbor has a worse connecting searches from randomly selected states. If each hill-climbing
→ Steepest higher value) states, Common in search has probability of success p then solution will be found on
Descent low-dimensional state average after 1/p restarts. Will eventually find the correct solution
(Category: Local search) spaces because goal state will be initial state.

Simulated ● Move to randomly chosen ● Problem with hill climbing: efficient, but will get stuck in a local maximum.
Annealing neighbor state ● Problem with random walk: most inefficient, but will eventually find the local maximum.
● If utility is higher, always move to ● Combination of both → simulated annealing (more complete and efficient)
(Category: that state.
Local ● If utility is lower, move to that
search) state with probability p < 1.
● Probability of a move to a worse
state
● Becomes less likely the worse
the move makes the situation
● Becomes less likely as
temperature decreases

4
$7.39
Accede al documento completo:

100% de satisfacción garantizada
Inmediatamente disponible después del pago
Tanto en línea como en PDF
No estas atado a nada

Conoce al vendedor
Seller avatar
KoendeB

Conoce al vendedor

Seller avatar
KoendeB Tilburg University
Seguir Necesitas iniciar sesión para seguir a otros usuarios o asignaturas
Vendido
7
Miembro desde
5 año
Número de seguidores
3
Documentos
3
Última venta
2 meses hace

0.0

0 reseñas

5
0
4
0
3
0
2
0
1
0

Recientemente visto por ti

Por qué los estudiantes eligen Stuvia

Creado por compañeros estudiantes, verificado por reseñas

Calidad en la que puedes confiar: escrito por estudiantes que aprobaron y evaluado por otros que han usado estos resúmenes.

¿No estás satisfecho? Elige otro documento

¡No te preocupes! Puedes elegir directamente otro documento que se ajuste mejor a lo que buscas.

Paga como quieras, empieza a estudiar al instante

Sin suscripción, sin compromisos. Paga como estés acostumbrado con tarjeta de crédito y descarga tu documento PDF inmediatamente.

Student with book image

“Comprado, descargado y aprobado. Así de fácil puede ser.”

Alisha Student

Preguntas frecuentes