# Smallest text fragment with k keywords

My friend was asked this question in a interview. Given a text document ( say an news article ) and a set of keywords (for ex google search terms), find the smallest segment in the text document which contains these keywords (in any order).

The method I could think of is to use a map containing the keyword and the position of the keyword in the text. We then use this map to select the text fragment. But I was looking for better methods.

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I would probably have proposed something like that:

``````1. create a new map of <String, Integer> of size k to associate each keyword
with its number of occurences in the text
2. go through the text and each time you encounter a keyword, increment its
number of occurences in the map
3. check that each keyword has been encountered at least once, otherwise
return a proper statement
4. start from the beginning of the text and each time you encounter a keyword,
decrement its number of occurences:
4.1. if the number reaches 0, stop iterating and set
int startIndex = currentIndex
4.2. otherwise keep iterating
5. start from the end of the text and each time you encounter a keyword,
decrement its number of occurences:
5.1. if the number reaches 0, stop iterating and set
int endIndex = currentIndex
5.2 otherwise keep reverse iterating
6. return [startIndex, endIndex]
``````

The overall complexity is O(n).

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I'm pretty sure this won't guarantee the smallest fragment, only a fragment. –  Emil Vikström Jun 24 '12 at 18:51
You're right. The algorithm is flawed and gives no guarantee. I will try to come up with a better one :) –  Vakh Jun 27 '12 at 7:27
thats wrong..... –  Spandan Jun 18 at 18:17

It seems to me you could actually complete this task with only one pass through the text file. The solution would be in O(n + \$\Sigma k_i\$), where \$k_i\$ are the lengths of the keywords, making heavily use of the KMP algorithm. I should add that I am assuming the number of keywords is small with respect to the sum of the lengths of the text and the keywords.

• First construct the failure functions of each keyword.
• Keep an array of the start position of each keyword. This array is going to be updated each time the keyword is seen, so that it contains the start position of the last occurrence of the keyword at a given time. Initialize it with minus infinity.
• Initialize the “text portion” to be returned to “empty”, and its length to infinity.
• Scan through the text using the failure functions, keeping score of the last occurrence of each keyword.
• Whenever a keyword is found, compute the length of the portion of text by end_position – min(start_positions). If this text portion is smaller than the one previously found, store it and continue, else keep the previous one. In any case update the start_position of the keyword.

At the end of the first pass, you should have found the smallest text portion containing all key words.

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You need a data structure with two pieces of info: a counter associated with each keyword (something like `map<string,int>`) and a queue of keywords. You go through the text and for each keyword encountered do this: