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[SOLVED] Comp3411/9814 artificial intelligence assignment 2 – heuristics and search

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In this assignment you will be examining search strategies for the 15-puzzle,
admissible heuristics for a trajectory planning problem, and pruning in alphabeta search trees. You should submit a report in .pdf format with answers
to the questions below.For this question you will construct a table showing the number of states
expanded when the 15-puzzle is solved, from various start positions, using
four different search strategies:
(i) Breadth First Search
(ii) Iterative Deepening Search
(iii) Greedy Search (using the Manhattan Distance heuristic)
(iv) A* Search (using the Manhattan Distance heuristic)Download the file path search.zip from this directory:
https://www.cse.unsw.edu.au/~cs3411/24T1/code/
Unzip the file and change directory to path search
unzip path_search.zip
cd path_search
Run the code by typing:
python3 search.py –start 2634-5178-AB0C-9DEF –s bfsThe –start argument specifies the start position, which in this case is:
2 6 3 4
5 1 7 8
A B C
9 D E F
Start State
1 2 3 4
5 6 7 8
9 A B C
D E FGoal State
The Goal State is shown on the right. The –s argument specifies the search
strategy (bfs for Breadth First Search).The code should print out the number of expanded nodes (by thousands)
as it searches. It should then print a path from the Start State to the Goal
State, followed by the number of nodes Generated and Expanded, and the
Length and Cost of the path (which are both equal to 12 in this case).(a) Draw up a table in this format:
Start State BFS IDS Greedy A*
start1
start2
start3Run each of the four search strategies from three specified start positions,
using the following combinations of command-line arguments:
Start Positions:
start1: –start 2634-5178-AB0C-9DEF
start2: –start 1034-728B-5D6A-E9FC
start3: –start 5247-61C0-9A83-DEBF
Search Strategies:
BFS: –s bfs
IDS: –s dfs –id
Greedy: –s greedy
A*S earch: –s astarIn each case, record in your table the length of the path, and the number
of nodes Expanded during the search. Include the completed table in
your report.
(b) Briefly discuss the efficiency of these four search strategies, with regard
to the number of nodes Expanded, and the length of the resulting path.In this question you will be exploring a search strategy known as Heuristic
Path Search, which is a best-first search using the objective function:
fw(n) = (2 − w)g(n) + wh(n),
where w is a number between 0 and 2. Heuristic Path Search is equivalent
to Uniform Cost Search when w = 0, to A* Search when w = 1, and Greedy
Search when w = 2. It is Complete for all w between 0 and 2.(a) Prove that Heuristic Path Search is optimal when 0 ≤ w ≤ 1, assuming
h() is admissible. (You may also assume that A* Search is optimal.)
Hint: show that minimizing fw(n) = (2 − w)g(n) + wh(n) is the same
as minimizing f

w(n) = g(n) + h

(n) for some function h

(n) with the
property that h

(n) ≤ h(n) for all n.(b) Draw up a table in this format (the top row has been filled in for you):
start4 start5 start6
IDA* Search 45 545120 50 4178819 56 169367641
HPS, w = 1.1 58 13770561
HPS, w = 1.2
HPS, w = 1.3
HPS, w = 1.4Run search.py on each of the three start states shown below, using the
Iterative Deepening version of Heuristic Path Search, with w = 1.1, 1.2, 1.3
and 1.4 .
Start Positions:
start4: –start A974-3256-FD8B-EC01
start5: –start 153E-A02C-9FBD-8476
start6: –start 418E-7AD0-9C52-3FB6
Search Strategies:
HPS, w = 1.1: –s heuristic –w 1.1 –id
HPS, w = 1.2: –s heuristic –w 1.2 –id
HPS, w = 1.3: –s heuristic –w 1.3 –id
HPS, w = 1.4: –s heuristic –w 1.4 –idIn each case, record in your table the length of the path, and the number
of nodes Expanded during the search. Include the completed table in
your report.(c) Briefly discuss how the path Length and the number of Expanded nodes
change as the value of w varies between 1.0 (equivalent to IDA*) and 1.4.We saw in lectures how the Straight-Line-Distance heuristic can be used to
find the shortest-distance path between two points. However, in many robotic
applications we wish to minimize not the distance but rather the time taken
to traverse the path, by speeding up on the straight bits and avoiding sharp
corners.In this question you will be exploring a simplified version of this problem in
the form of a game known as Graph Paper Grand Prix (GPGP).To play GPGP, you first need to draw the outline of a racing track on a sheet
of graph paper, and choose a start location S = (rS, cS) as well as a Goal
location G = (rG, cG) where r and c are the row and column. The agent
begins at location S, with velocity (0,0). A “state” for the agent consists of a
position (r, c) and a velocity (u, v), where r, c, u, v are (positive or negative)
integers.
G
SAt each time step, the agent has the opportunity to increase or decrease each
component of its velocity by one unit, or to keep it the same. In other words,
the agent must choose an acceleration vector (a, b) with a, b ∈ {−1, 0, +1}. It
then updates its velocity from (u, v) to (u

, v′
) = (u + a, v + b), and updates
its position – using the new velocity – from (r, c) to (r + u

, c + v

).The
aim of the game is to travel as fast as possible, but without crashing into
any obstacles or running off the edge of the track, and eventually stop at the
Goal with velocity (0, 0).
4
G
0 k n
SWe first consider a 1-dimensional version of GPGP where the vehicle moves
through integer locations on a number line, with no obstacles. Assume the
Goal is at location n, and that the agent starts at location 0, with velocity k.We will use M(n, k) to denote the minimum number of time steps required
to arrive and stop at the Goal. Clearly M(−n, −k) = M(n, k) so we only
need to compute M(n, k) for k ≥ 0.(a) Starting with the special case k = 0, compute M(n, 0) for 1 ≤ n ≤ 21 by
writing down the optimal sequence of actions for all n between 1 and 21. For
example, if n = 7 then the optimal sequence is [+ + ◦ − ◦−] so M(7, 0) = 6.
(When multiple solutions exist, you should pick the one which goes “fast
early” i.e. with all the +’s at the beginning.)(b) Assume n ≥ 0. By extrapolating patterns in the sequences from part (a),
explain why the general formula for M(n, 0) is
M(n, 0) = l
2

n
m
,
where ⌈z⌉ denotes z rounded up to the nearest integer.Hint: Do not try to use recurrence relations. You should instead use this
identity:
l
2

n
m
=



2s + 1, if n = s
2 + j, 1 ≤ j ≤ s
2s + 2, if n = s
2 + s + j , 1 ≤ j ≤ s
2s + 2, if n = (s + 1)2(c) Assuming the result from part (b), show that if k ≥ 0 and n ≥
1
2
k(k−1)
then
M(n, k) = l
2
q
n +
1
2
k(k+1)m
− kHint: Consider the path of the agent as part of a larger path.(d) Derive a formula for M(n, k) in the case where k ≥ 0 and n < 1
2
k(k−1).(e) Write down an admissible heuristic (that approximates the true number
of moves as closely as possible) for the original 2-dimensional GPGP game in
terms of the function M() derived above.Hint: Consider the horizontal and vertical motion separately, keeping in mind
that, unlike the 15-puzzle, the agent can move in the horizontal and vertical
direction simultaneously. Your heuristic should be of this form:
h (r, c, u, v, rG, cG) = max(M(.., ..), M(.., ..))(a) Consider a game tree of depth 4, where each internal node has exactly
two children (shown below). Fill in the leaves of this game tree with all
of the values from 0 to 15, in such a way that the alpha-beta algorithm
prunes as many nodes as possible. Hint: make sure that, at each branch
of the tree, all the leaves in the left subtree are preferable to all the leaves
in the right subtree (for the player whose turn it is to move).
MIN
MAX
MAX
MIN(b) Trace through the alpha-beta search algorithm on your tree, clearly showing which of the original 16 leaves are evaluated.(c) Now consider another game tree of depth 4, but where each internal node
has exactly three children. Assume that the leaves have been assigned
in such a way that the alpha-beta algorithm prunes as many nodes as
possible. Draw the shape of the pruned tree. How many of the original
81 leaves will be evaluated?Hint: If you look closely at the pruned tree from part (b) you will see
a pattern. Some nodes explore all of their children; other nodes explore
only their leftmost child and prune the other children.The path down
the extreme left side of the tree is called the line of best play or Principal
Variation (PV). Nodes along this path are called PV-nodes. PV-nodes
explore all of their children. If we follow a path starting from a PV-node
but proceeding through non-PV nodes, we see an alternation between
nodes which explore all of their children, and those which explore only
one child. By reproducing this pattern for the tree in part (c), you should
be able to draw the shape of the pruned tree (without actually assigning
values to the leaves or tracing through the alpha-beta algorithm).(d) What is the time complexity of alpha-beta search, if the best move is
always examined first (at every branch of the tree)? Explain why.Submission
This assignment must be submitted electronically – either through WebCMS,
or from the command line, using:
give cs3411 hw2 hw2.pdfThe submission deadline is Tuesday 2nd April, 2pm. Late submissions will
incur a penalty of 5% per day, up to a maximum of 5 days.Group submissions will not be allowed. By all means, discuss the assignment
with your fellow students. But you must write (or type) your answers individually. Do not copy anyone else’s assignment, or send your assignment to
any other student.
Good luck!

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[SOLVED] Comp3411/9814 artificial intelligence assignment 2 – heuristics and search
$25