UniTO/anno1/Algoritmi.e.Complessita/seminario/paper1.md
2024-10-29 09:11:05 +01:00

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# Searching in an unknown environment - An optimal randomized algorithm for the cow-path problem
## Introduction
* Classical search problems: **cost of a search == number of queries **made to an oracle which knows the position of the goal.
* w-lane Cowpath Problem: **position unknown (no oracle)**. **Cost: proportional to the distance between queries**. Example: time required to travel between two query points.
*(problem description)*
*(problem application - robotics/hybrid algorithms/AI examples etc.)*
This problem has various common points (*see later*) with **online algorithms** and because of this we use the notion of **competitive analysis of online algorithms** to measure the **efficiency** of the w-lane Cowpath problem. [Quick description of online algorithms.](https://en.wikipedia.org/wiki/Online_algorithm) - [Competitive analysis of OA](https://en.wikipedia.org/wiki/Competitive_analysis_(online_algorithm)).
### Competitive ratio for the Cow-Path problem
Competitive analysis uses an optimal offline algorithm (read: one in which **all data is avaiable from the start**) and defines a **competitive ratio** by comparing the performance of the online and offline algorithms.
An algorithm is ***competitive*** if its competitive ratio is **bounded**.
We define a competitive ratio for the w-lane Cowpath problem:
***The competitive ratio for an algorithm solving the cow-path problem is the worst-case ratio of the expected distance traveled by the algorithm to the shortest-path distance from origin to goal.***
In particular, if the worst-case expected distance traveled by a randomized algorithm is at most `cn+d`, where `n` is the distance to the goal and `d` is a fixed constant, then `c` is the competitive ratio of this algorithm.
## Deterministic algorithm
*(baeza-yaetes paper)*
## Randomized algorithm
*(quick abstract, see paper for detailed version / formulas)*
### Definitions
A deterministic algorithm for the cow-path problem has competitive ratio `c` if:
```
cost(goal) <= c*dist(goal) + d // c,d are constants independent from g
```
Considering a **randomized algorithm**, the distance traveled to find a given goal position is **no longer fixed**. This means that cost(goal) is a **random variable**, and the competitive ratio `c` is computed on the **expected value of that random variable**.
```
E[cost(goal)] <= c*dist(g) + d
```
This means that **a randomized algorithm has competitive ratio c if the expected value of the distance it has to travel is at most** `c*n + /small constant/`.
### Algorithm
*(see paper)*
### Theorems
#### 3.1
***For any fixed geometric ratio r*** *(explain)* ***the algorithm has competitive ratio R(r,w)***
#### 4.1
*(see paper)*
### Lower Bound Analysis
*(see paper)*
### Minimization of the competitive ratio
*(see paper)*
### Growth w. number of paths
*(see paper)*
*Note: here we could prove that the algorithm is optimal with w=2*