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alien-dictionary.py
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alien-dictionary.py
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# Time: O(n)
# Space: O(|V|+|E|) = O(26 + 26^2) = O(1)
# BFS solution.
class Solution(object):
def alienOrder(self, words):
"""
:type words: List[str]
:rtype: str
"""
result, zero_in_degree_queue, in_degree, out_degree = [], collections.deque(), {}, {}
nodes = sets.Set()
for word in words:
for c in word:
nodes.add(c)
for i in xrange(1, len(words)):
if len(words[i-1]) > len(words[i]) and \
words[i-1][:len(words[i])] == words[i]:
return ""
self.findEdges(words[i - 1], words[i], in_degree, out_degree)
for node in nodes:
if node not in in_degree:
zero_in_degree_queue.append(node)
while zero_in_degree_queue:
precedence = zero_in_degree_queue.popleft()
result.append(precedence)
if precedence in out_degree:
for c in out_degree[precedence]:
in_degree[c].discard(precedence)
if not in_degree[c]:
zero_in_degree_queue.append(c)
del out_degree[precedence]
if out_degree:
return ""
return "".join(result)
# Construct the graph.
def findEdges(self, word1, word2, in_degree, out_degree):
str_len = min(len(word1), len(word2))
for i in xrange(str_len):
if word1[i] != word2[i]:
if word2[i] not in in_degree:
in_degree[word2[i]] = sets.Set()
if word1[i] not in out_degree:
out_degree[word1[i]] = sets.Set()
in_degree[word2[i]].add(word1[i])
out_degree[word1[i]].add(word2[i])
break
# DFS solution.
class Solution2(object):
def alienOrder(self, words):
"""
:type words: List[str]
:rtype: str
"""
# Find ancestors of each node by DFS.
nodes, ancestors = sets.Set(), {}
for i in xrange(len(words)):
for c in words[i]:
nodes.add(c)
for node in nodes:
ancestors[node] = []
for i in xrange(1, len(words)):
if len(words[i-1]) > len(words[i]) and \
words[i-1][:len(words[i])] == words[i]:
return ""
self.findEdges(words[i - 1], words[i], ancestors)
# Output topological order by DFS.
result = []
visited = {}
for node in nodes:
if self.topSortDFS(node, node, ancestors, visited, result):
return ""
return "".join(result)
# Construct the graph.
def findEdges(self, word1, word2, ancestors):
min_len = min(len(word1), len(word2))
for i in xrange(min_len):
if word1[i] != word2[i]:
ancestors[word2[i]].append(word1[i])
break
# Topological sort, return whether there is a cycle.
def topSortDFS(self, root, node, ancestors, visited, result):
if node not in visited:
visited[node] = root
for ancestor in ancestors[node]:
if self.topSortDFS(root, ancestor, ancestors, visited, result):
return True
result.append(node)
elif visited[node] == root:
# Visited from the same root in the DFS path.
# So it is cyclic.
return True
return False