Download presentation
Presentation is loading. Please wait.
1
1 Efficient Processing of XPath Queries Using Indexes Yan Chen 1, Sanjay Madria 1, Kalpdrum Passi 2, Sourav Bhowmick 3 1 Department of Computer Science, University of Missouri-Rolla, Rolla, MO 65409, USA madrias@umr.edu 2 Dept. of Math. & Computer Science, Laurentian University, Sudbury ON P3E 2C6 Canada kpassi@cs.laurentian.ca 3 School of Computer Engineering, Nanyang Technological University, Singapore assourav@ntu.edu.sg
2
2 Querying Semistructured Data Query languages to query semistructured data –XQuery, XML-QL, XML-GL, Lorel, and Quilt Semistructured data is represented as a graph Queries on such data are expressed in the form of regular path expressions XPath is a language that describes the syntax for addressing path expressions over XML data Indexes on XML data - improves the performance of the query on large XML files Indexing techniques used in relational and object-oriented databases do not suffice for semistructured data due to the nature of the data
3
3 Indexing Semistructured Data Dataguides –record information on the existing paths in a database –do not provide any information of parent-child relationships between nodes in the database –as a result they cannot be used for navigation from any arbitrary node. T-indexes –specialized path indexes, which only summarize a limited class of paths. –1-index and 2-index are special cases of T-indexes
4
4 Indexing Semistructured Data LORE –Uses four different types of index structures - value, text, link, and path indexes –Value index and text index are used to search objects that have specific values –link index and path index provide fast access to parents of an object and all objects reachable via a given labeled path –Lore uses OEM (Object Exchange Model) to store data and OQL (Object Query Language) as its query language
5
5 Indexing Semistructured Data ToXin –has two different types of index structure: the value index and the path index. –The path index has two parts: index tree and instance functions, and these functions can be used to trace the parent-child relationship. –Their path index contains only parent and children information but in our model, we store the complete path from root to each node. –ToXin uses index for single level while we use multiple index for different levels
6
6 A Sample XML File 1-1-1 David 1-1-2 Chris 1-1-3 Chris 1-1-4 Michael 1-1-5 Jason 1-1-6 Tomas
7
7 XML as DOM Tree
8
8 Indexing XML Data - Motivation Retrieve all the books with author’s name as “Chris” from the Benny-bookstore –We need to find all the nodes in the DOM tree with child nodes of BOOKSTORE as BOOK. –Then for each BOOK, we need to test the author’s name. –After about 100,000 comparisons we get a couple of books with author “Chris” as the output –By using index on AUTHOR, we do not need to test author of each BOOK node. –With the index of the key as “Chris”, we can find all author nodes faster –The nodes obtained can be checked if they satisfy the query condition. –This is a “bottom-up” query plan. –Such a plan is useful in the case when we have a relatively “small” result set at the bottom, which can be pre-selected
9
9 Indexing XML Data - Motivation Find all the books with the name beginning with “glory” and the author as “Chris” –The query plan could be to get all the books with the name “glory” disregarding their authors. –If there are small number of books satisfying the constraint, (e.g., four “glory” books), it might be useful to introduce another type of index, which is built on the values of some nodes. –Here, we need index upon strings. –On the basis of the nodes obtained in the first step, we can further test another condition on the query. –Hence, we can build a set of nodes as the “entry set”, which will depend on the specific query and on the type of XML data
10
10 Types of Indexes Name-index (Nindex) –A name index locates nodes with the tag names –The Nindex for the incoming tag over the XML fragment in figure 2 will then be {&2, &3, &4, &13, &16, &19} Value-index (Vindex) –A value-index locates nodes with given value –The Value-index for the word “Chris” is {&10, &12}, for the word “the” is {&2, &4} Path-index (Pindex) –A path-index, locates nodes with the path from root node –Path index is the information we attach to each node to record its ancestors’ paths –In Dom tree the path information of &11 is {&1, &4}; node &7 is {&1, &2} Descent Number (DN) –Descent Number is the information we attach to every node to record the number of its descents. –In the DOM tree, the DN of node &11 is 0; the DN of node &3 is 2
11
11 Example for XPath Queries Addison-Wesley Serge Abiteboul Rick Hull Victor Vianu Foundations of Databases 1995 Freeman Jeffrey D. Ullman Principles of Database and Knowledge Base Systems 1998 Addison-Wesley Serge Abiteboul Rick Hull Victor Vianu Foundations of Databases 1995 Freeman Jeffrey D. Ullman Principles of Database and Knowledge Base Systems 1998
12
12 Data Model for XPath bib book publisherauthor.. Addison-WesleySerge Abiteboul The root The root element Much like the Xquery data model Processing instruction Comment
13
13 XPath: Simple Expressions /bib/book/year Result: 1995 1998 /bib/paper/year Result: empty (there were no papers)
14
14 Entry-point Technique We find an entry-point node among a set of middle level nodes in the XPath expression. Then we split the XPath expression at the entry-point and test for the path condition for the first part and eliminate nodes from DOM tree that do not satisfy the path condition. Then we test the remaining part of the XPath expression recursively eliminating nodes that do not satisfy the path condition. The algorithm can be implemented either using top-down approach or bottom-up approach
15
15 Entry-point Technique – An Example Select BOOKSTORE/BOOK where BOOK.name = “Glory days” and /AUTHOR.title = “Chris” and BOOKSTORE.name = “Benny-bookstore” The above query is transformed to the following XPath expression /BOOKSTORE [name = “Benny-bookstore”]/child:: BOOK[title = “Glory Days”] /Child :: AUTHOR/child :: FIRSTNAME[name = “Chris”] Use Nindex to get all BOOK nodes or AUTHOR nodes
16
16 Entry-point Technique – An Example Get all books named “Glory Days” and then test the condition on each one of them if the author is “Chris” /BOOKSTORE [name = “Benny-bookstore”]/child:: BOOK[title = “Glory Days”] Then, we test each author child node, which is the latter part of X-path expression /Child :: AUTHOR/child :: FIRSTNAME[name = “Chris”] In second strategy, first get all authors named “Chris”, and then test the parent nodes if book name is “Glory Days”
17
17 Entry-point Root-first Algorithm INPUT: XPath expression root/X 1 /X 2 /…/X i /…/X m STEP 1: FOR each X i BEGIN IF X i is indexed THEN BEGIN get every node x i of type X i get the DN n i of each x i Sum i = n i END STEP 2: Get entry point X n with minimum Sum, add all x n to a node set S; Consider the tree obtained after deleting all branches that do not have the node x n in its path. split the XPath into root/X 1 /X 2 /…/X n-1 and /X n+1 /…/X m by the entry point X n ; STEP 3: FOR each node x n in S BEGIN IF the path starting from root to node x n is not included in the path root/X 1 /X 2 /…/X n-1 /X n THEN delete the sub tree that does not satisfy the path condition END STEP 4: FOR each node x n in S, consider all sub trees starting with x n BEGIN IF X n+1 /…/X m is same as /X m THEN return nodes X m ELSEINPUT = X n /X n+1 /…/X m GO TO STEP 1 END
18
18 Example – Entry-point Root-first Algorithm X-Path: A/B/C/E//H
19
19 Example – Entry-point Root-first Algorithm Step 1: calculate descent numbers (DN) of the nodes that have indexes DN of node B = 31 DN of node E = 18 Entry-point = node E (minimum DN)
20
20 Example – Entry-point Root-first Algorithm Step 2: Delete the branches that do not have E XPath – A/B/C/E and E//H
21
21 Example – Entry-point Root-first Algorithm Step 3: test A/B/C/E on each E node and discard the right most sub tree with node E Step 4: evaluate E//H on each E and finally we get the three H nodes Cost – O(N) where N is the number of nodes
22
22 Rest-tree Conception Performance deterioration in Entry-point algorithm –Find books written by “David” where the title of the book contains the word “book” –The XML file might have hundreds of books having the word “book” in the title and –further there might be a large number of books by author “David”, but only one of them has the word “book” in its title –The Entry-point algorithm first eliminates all the nodes that do not have the word “book” in its title. –Then it eliminates the nodes that do not have “David” as the author –Due to relatively large number of instances at the two levels, large number of eliminations is required
23
23 Rest-tree Conception The tree formed by the nodes that meet certain condition at its level, along with its descendant and ancestor nodes In the example, the Rest-tree of the node that satisfies the condition that the node has the word “glory” in its title, is as shown
24
24 Rest-tree Conception First employ Entry-point algorithm to find all nodes that meet the condition statements at each level The final result will then be the intersection of the Rest-trees of these nodes In practice, we do not need to find the Rest-tree of every node satisfying the condition. Small set of nodes are left after applying the Entry-point algorithm So we need to find the Rest-trees of a relatively small set of nodes within a small sub tree To get the intersection of rest-trees, note that the nodes that satisfy the query condition and that have the minimum number of descendants is available from the Entry-point algorithm
25
25 Rest-tree Conception The minimum level is the anchor level of the rest- tree algorithm. We just need to intersect the Rest-trees at this minimum level. For example, after the first step of Entry-point algorithm, we know there are 2000 nodes at Level A that meet say condition A, 1000 nodes at Level B that meet condition B, 200 nodes at Level C, 3000 at Level D, 400 at Level E. The minimum level is C and the order of the levels is C E B A D
26
26 Rest-tree Conception Ancestor node information is available as path- index Filter some nodes at Level C by checking the grandparent node information of the 400 nodes at Level E Similarly, we can filter some other nodes at Level C by checking the parent node information of the nodes at Level B. The intersection at Level C will be complete by checking ancestor information at Level D nodes. The final step is to get all the nodes that satisfy the query requirement
27
27 Rest-tree Algorithm INPUT: X-path expression root/X 1 /X 2 /…/X i /…/X m STEP 1: FOR each X i BEGIN IF X i is indexed THEN BEGIN get every node x i of type X i get the DN number n i of each x i Sum i = n i ; END STEP 2: get entry point X j with minimum Sum, add all x j to a node set S j ; get comparison point X k with second minimum Sum, add all x k to a node set S k ; STEP 3: IF level j > k FOR each node x k in S k IF its ancestor is not in S j THEN delete x k from S k ELSE FOR each node x j in S j IF its ancestor is not in S k THEN delete x j from S j STEP 4: FOR each node x j in S j BEGIN IF the path starting from root to node x j is not included in the path root/X 1 /X 2 /…/X j THEN delete the sub tree that does not satisfy the path condition END STEP 5: FOR each node x j in S j, consider all sub trees starting with x j BEGIN IF X j+1 /…/X m is same as /X m THEN return nodes X m ELSEINPUT = X j / X j+1 /…/X m GO TO STEP 1; END
28
28 Rest-tree Algorithm - Example XPath - A/B/C/E//H Step 1: Calculate DNs DOM Tree
29
29 Rest-tree Algorithm - Example Step 2: Minimum DN DN of node B = 32 DN of node C = 20 DN of node E = 18
30
30 Rest-tree Algorithm - Example Step 3: Delete “E” nodes whose ancestor does not have “C”
31
31 Rest-tree Algorithm - Example Step 4: Delete the subtree that does not satisfy the path A/B/C/E Step 5: Get all the nodes from E//H
32
32 Test Cases and Comparisons Size of DOM Tree –Entry-point algorithm performs much better than the traditional algorithm, taking less than one third of the processing time of the traditional algorithm Increasing Number of Nodes for XPath: / /A20//C30//A80
33
33 Test Cases and Comparisons Result Nodes Set –The processing time for the Entry-point algorithm has increased slightly with increasing number of result nodes. –Partially, the reason is due to the recursive function call in the Entry-point Algorithm code Increasing Number of Result Nodes
34
34 Test Cases and Comparisons Tree Height –The variation tendency of processing time of the three methods is the same with the height of the tree Tree Height Increasing
35
35 Test Cases and Comparisons Without Index on result nodes –The traditional method turns out to be a disaster, falling into no index method category. –However, the Entry-point Algorithm is still in good shape Tree Height Increasing
36
36 Conclusions Proposed three types of indexes on XML data to execute efficiently XPath queries. We proposed two algorithms to process XPath queries using these indexes to optimize the queries. We have also simulated both bottom-up and top-down approaches Processing XPath query using the Entry-point indexing technique performs much better than traditional algorithms with or without indexes
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.