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CS 430 / INFO 430 Information Retrieval
Lecture 8
Query Refinement and Relevance Feedback
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Course Administration
Assignment Reports
A sample report will be posted before the next assignment is due.
Preparation for Discussion Classes
Most of the readings were used last year. You can see the questions that were used on last year's Web site:
http://www.cs.cornell.edu/Courses/cs430/2004fa/
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CS 430 / INFO 430 Information Retrieval
Completion of Lecture 7
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Search for Substring
In some information retrieval applications, any substring can be a search term.
Tries, using suffix trees, provide lexicographical indexes for all the substrings in a document or set of documents.
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Tries: Search for Substring
Basic concept
The text is divided into unique semi-infinite strings, or sistrings. Each sistring has a starting position in the text, and continues to the right until it is unique.
The sistrings are stored in (the leaves of) a tree, the suffix tree. Common parts are stored only once.
Each sistring can be associated with a location within a document where the sistring occurs. Subtrees below a certain node represent all occurrences of the substring represented by that node.
Suffix trees have a size of the same order of magnitude as the input documents.
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Tries: Suffix Tree
Example: suffix tree for the following words:
begin beginning between bread break
b
e rea
gin tween d k
null ning
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Tries: Sistrings
A binary example
String: 01 100 100 010 111
Sistrings: 1 01 100 100 010 1112 11 001 000 101 113 10 010 001 011 14 00 100 010 1115 01 000 101 11
6 10 001 011 17 00 010 1118 00 101 11
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Tries: Lexical Ordering
7 00 010 1114 00 100 010 1118 00 101 115 01 000 101 111 01 100 100 010 111
6 10 001 011 13 10 010 001 011 12 11 001 000 101 11
Unique string indicated in blue
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Trie: Basic Concept
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4 8
5 1
2
6 3
0
0
0
0
0
0
0
0
0
1
1
1
11
1
1
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Patricia Tree
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4 8
5 1
2
6 3
0
0
0
00
0
0
0
1
1
1
110 1
1
1
2 2
3 3 4
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Single-descendant nodes are eliminated.
Nodes have bit number.
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CS 430 / INFO 430 Information Retrieval
Lecture 8
Query Refinement and Relevance Feedback
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Query Refinement
Search
Reformulate query
Display retrieved information
new query
reformulated query
Query formulation
EXIT
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Reformulation of Query
Manual
• Add or remove search terms
• Change Boolean operators
• Change wild cards
Automatic
• Remove search terms
• Change weighting of search terms
• Add new search terms
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Manual Reformulation:Vocabulary Tools
Feedback
• Information about stop lists, stemming, etc.
• Numbers of hits on each term or phrase
Suggestions
• Thesaurus
• Browse lists of terms in the inverted index
• Controlled vocabulary
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Manual Reformulation: Document Tools
Feedback to user consists of document excerpts or surrogates
• Shows the user how the system has interpreted the query
Effective at suggesting how to restrict a search
• Shows examples of false hits
Less good at suggesting how to expand a search
• No examples of missed items
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Relevance Feedback: Document Vectors as Points on a Surface
• Normalize all document vectors to be of length 1
• Then the ends of the vectors all lie on a surface with unit radius
• For similar documents, we can represent parts of this surface as a flat region
• Similar document are represented as points that are close together on this surface
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Results of a Search
x x
xx
xx
x
hits from search
x documents found by search query
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Relevance Feedback (Concept)
x x
xx
oo
o
hits from original search
x documents identified by user as non-relevanto documents identified by user as relevant original query reformulated query
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Theoretically Best Query
x x
xx
oo
o
optimal query
x non-relevant documentso relevant documents
o
oo
x
x
x x
xx
x
x
xx
x
xx
x
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Theoretically Best Query
For a specific query, q, let:
DR be the set of all relevant documents
DN-R be the set of all non-relevant documents
sim (q, DR) be the mean similarity between query q and documents in DR
sim (q, DN-R) be the mean similarity between query q and documents in DN-R
The theoretically best query would maximize:
F = sim (q, DR) - sim (q, DN-R)
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Estimating the Best Query
In practice, DR and DN-R are not known. (The objective is to find them.)
However, the results of an initial query can be used to estimate sim (q, DR) and sim (q, DN-R).
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Rocchio's Modified Query
Modified query vector
= Original query vector
+ Mean of relevant documents found by original query
- Mean of non-relevant documents found by original query
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Query Modification
q1 = q0 + ri - sii =1
n1
n1
1 i =1
n2
n2
1
q0 = vector for the initial queryq1 = vector for the modified queryri = vector for relevant document isi = vector for non-relevant document in1 = number of relevant documentsn2 = number of non-relevant documents
Rocchio 1971
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Difficulties with Relevance Feedback
x x
xx
oo
o
optimal query
x non-relevant documentso relevant documents original query reformulated query
o
oo
x
x
x x
xx
x
x
xx
x
xx
x
Hits from the initial query are contained in the gray shaded area
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Difficulties with Relevance Feedback
x x
xx
oo
o
optimal results set
x non-relevant documentso relevant documents original query reformulated query
o
oo
x
x
x x
xx
x
x
xx
x
xx
x
What region provides the optimal results set?
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Effectiveness of Relevance Feedback
Best when:
• Relevant documents are tightly clustered (similarities are large)
• Similarities between relevant and non-relevant documents are small
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When to Use Relevance Feedback
Relevance feedback is most important when the user wishes to increase recall, i.e., it is important to find all relevant documents.
Under these circumstances, users can be expected to put effort into searching:
• Formulate queries thoughtfully with many terms
• Review results carefully to provide feedback
• Iterate several times
• Combine automatic query enhancement with studies of thesauruses and other manual enhancements
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Adjusting Parameters 1: Relevance Feedback
q1 = q0 + ri - sii =1
n1
n1
1
i =1
n2
n2
1
, and are weights that adjust the importance of the three vectors.
If = 0, the weights provide positive feedback, by emphasizing the relevant documents in the initial set.
If = 0, the weights provide negative feedback, by reducing the emphasis on the non-relevant documents in the initial set.
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Adjusting Parameters 2:Filtering Incoming Messages
D1, D2, D3, ... is a stream of incoming documents that are to be divided into two sets:
R - documents judged relevant to an information needS - documents judged not relevant to the information need
A query is defined as the vector in the term vector space:
q = (w1, w2, ..., wn)
where wi is the weight given to term i
Dj will be assigned to R if similarity(q, Dj) >
What is the optimal query, i.e., the optimal values of the wi?
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Seeking Optimal Parameters
Theoretical approach
Develop a theoretical model
Derive parameters
Test with users
Heuristic approach
Develop a heuristic
Vary parameters
Test with users
Machine learning approach
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Seeking Optimal Parameters using Machine Learning
GENERAL: EXAMPLE: Text Retrieval
Input: Input:• training examples • queries with relevance judgments• design space • parameters of retrieval function
Training: Training:• automatically find the solution • find parameters so that many in design space that works well relevant documents are ranked on the training data highly
Prediction: Prediction:• predict well on new examples • rank relevant documents high
also for new queries
Joachims
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Task Application
Text Routing Help-Desk Support:Who is an appropriate expert for a particular problem?
Information Information Agents:Filtering Which news articles are interesting to a particular
person?
Relevance Information Retrieval:Feedback What are other documents relevant for a particular
query?
Text Knowledge Management:Categorization Organizing a document database by semantic
categories.
Machine Learning: Tasks and Applications
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Learning to Rank
Assume:• distribution of queries P(q)• distribution of target rankings for query P(r | q)
Given:• collection D of documents• independent, identically distributed training sample (qi, ri)
Design:• set of ranking functions F• loss function l(ra, rb)• learning algorithm
Goal:• find f F that minimizes l(f (q), r) integrated across all queries
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A Loss Function for Rankings
For two orderings ra and rb, a pair is:
• concordant, if ra and rb agree in their orderingP = number of concordant pairs
• discordant, if ra and rb disagree in their orderingQ = number of discordant pairs
Loss function: l(ra, rb) = Q
Example:ra = (a, c, d, b, e, f, g, h)rb = (a, b, c, d, e, f, g, h)
The discordant pairs are: (c, b), (d, b) l(ra, rb) = 2
Joachims
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Machine Learning: Algorithms
The choice of algorithms is a subject of active research, which is covered in several courses, notably CS 478 and CS/INFO 630.
Some effective methods include:
Naive Bayes
Rocchio Algorithm
C4.5 Decision Tree
k-Nearest Neighbors
Support Vector Machine
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Relevance Feedback:Clickthrough Data
Relevance feedback methods have suffered from the unwillingness of users to provide feedback.
Joachims and others have developed methods that use Clickthrough data from online searches.
Concept:
Suppose that a query delivers a set of hits to a user.
If a user skips a link a and clicks on a link b ranked lower,then the user preference reflects rank(b) < rank(a).
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Clickthrough Example
Ranking Presented to User:
1. Kernel Machineshttp://svm.first.gmd.de/
2. Support Vector Machinehttp://jbolivar.freeservers.com/
3. SVM-Light Support Vector Machinehttp://ais.gmd.de/~thorsten/svm light/
4. An Introduction to Support Vector Machineshttp://www.support-vector.net/
5. Support Vector Machine and Kernel ... Referenceshttp://svm.research.bell-labs.com/SVMrefs.html
Ranking: (3 < 2) and (4 < 2)
User clicks on 1, 3 and 4
Joachims