CS 481 Midterm

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Backtracing

"Goal Directed" reasoning backwards to a current state from a goal state. This is done by creating sub goal states on the way to current goal state.

Heuristic advantages

- Can find solutions that are complex and time-consuming for exact methods - Can often find good solutions, that are probably not optimal but better than uninformed methods

Heuristic disadvantages

- Heuristics may not find optimal solution - Heuristics are hard to make, and a bad heuristic leads to suboptimal solutions or loops

DFS disadvantages

- May be less efficient - May take a longer path to goal state - Goes deep down searching and sometime it may go to the infinite loop

Finding a goal state

A control strategy determines how transformations between states take place.

Iterative Deepening Search

A depth limited search that gradually increases the limit. Generates states multiple times. IE DFS with depth limit that increases overtime: Aims to take advantages of DFS with search type and BFS with tree limit.

Goal Space

A state where the agent may end the search.

Fully observable

An agent's sensors give it access to the complete state of the environment at each point in time.

BFS time complexity

BFS may be quicker, but need to make space for every node connected top root n1, and every node at n2 if not found.

GBFS advantages

Can find path very quickly if heuristic is good.

disadvantages of hill climbing

Can get stuck at a suboptimal end state, may terminate immediately

A* advantages

Combines UCS and GBFS together to get a better overall cost.

Minimax Disadvantages

Computentalizally expensive, difficult to implement

Discrete

Consists of a finite number of states and agents with a finite number of actions. Example: Tic-Tac-Toe Board. Move amount may vary but there is an end.

A* Disadvantages

Costly in both time and space

DFS Space complexity

DFS has a smaller space cost than bfs.

Episodic

Each game state is independent of each other. The states have no bearing on each other. Example: A machine that processes images, each image has no influence over another.

Dynamic

Environment could be changing while the agent is preempting or performing action. Example stock market, or Peggle with the extra ball platform.

Static

Environment is completely unchanged while agent is preempting a move. Example chess without a clock or crossword.

Sequential

Environment where next state is dependent on current action. Example poker or chess.

Breath First Search (BFS)

Expand and evaluate the shallowest node first. Traversing level by level. Goal is to find shortest path depth wise but not least costly

Depth First Search (DFS)

Expand the deepest node first. Backtrace.

Minimax complexity

Exponential deptj of game tree

BFS data structure

FIFO Queue

UCS advantages

Finds lowest cost solution

Uniform Cost Search (UCS)

Finds the cheapest path to a goal state. With a visited list. Traverses by calculating the total costs of paths before traversing (no evaluation of states where cost is being considered until it is the cheapest), always choosing the cheapest path.

BFS space complexity

Has to make space for all connecting nodes, space cost high

Hill climbing

Hill climbing is a tech for finding local max or min of a function. Used for optimization and machine learning.

Greedy Best First Search

Informed Search Algorithm, Greed always takes the least cost with a partially informed graph. Example: Having a train map with the straight line distance to goal state calculated in node. Has elements of UCS but instead of keeping track of total cost, it keeps track of total cost to goal.

DFS data structure

LIFO Stack

Minimax Search Algorithm

Max, min, fight. Minimum of the maximum. Alpha beta pruning is disregarding any value that is lower than maximum. V= total for given branch that is accepteddzz, Alpha best total for tree, pass beta down tree checking if there is anything higher on the tree to disreguard.

Greedy Best First Search disadvantages.

Not promised to finish quickly, often does not find the shortest path. g(n)

DFS time complexity

O(V+E) V=num of vertices, E=num of edges. Visits all vertices recursively.

Stochastic

Outcomes are not certain Randomness changes the system dynamics. Outcomes are uncertain.

continuous environment

Percepts, actions and episodes are continuous (think robot car). Environment is inconsistent and does not have a finite amount of agents, actions, or states

Partially Observable

Players cannot see the entire game state, such as in a game of poker

GBFS

Priority queue

UCS Structure

Priority queue

PL to CNF

Remove bicondition, example: A<-->B to (A->B) ^ (B->A) Remove implication: A->B to ~AVB Move negation inwards: ~(AVB) to ~A^~B ~(AVB) to ~A^~B ~(~A) to A A^(BVC) to (A^B) V(A^C)

Advantages of hill climbing

Simple to implement, efficient for larger complex problems

UCS disadvantages

Takes alot of time and space

Graph search

Tech for finding a path from one node in a graph to another. Used primarily for routing and planning

deterministic

The outcome of the game is determined purely by the current game state and players' actions. Produce the exact results for a set of inputs.

Known

The outcomes (or probabilities) for all actions are given

unknown

The outcomes are uncertain for the environment and not given. Agent gathers info about given environment and is not given info forthright.

Comp

The players compete against each other to achieve own goals

Coop

The players work together to achieve a common goal

State space

The representation of all possible game states the game can be in.

Multiple agents

There are multiple players in the game

Single agent

There is only one player in the game

forward reasoning

Using data and reasoning driven approach to start from current state and find goal state.

A* Star Algorithm

Using the cost of an informed heuristic like greedy search, but adds the heuristic with cost of total edges to n. g(n+n2+...) + h(n)

Minimax Advantages

complete algorithm, will find best solution given infinite amount of time

UCS structure

priority queue with visited


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