SlideShare a Scribd company logo
MULTIMEDIA
USING HYPERTEXT
Hypertext:
Hypertext is text displayed on a computer or
other electronic devices with references
(hyperlinks) to other text which the reader
can immediately access.
Using Hypertext:
 Hypertext documents are interconnected
by hyperlinks, which are typically
activated by a mouse click.
 Apart from text, the term "hypertext" is
also sometimes used to describe tables,
images, presentational content and
other database fashion.
Fashion Database:
A “fashion database" is one that collects,
organizes, and displays information
regarding apparel, shoes, and/or fashion
accessories. It may possibly include
information regarding fabrics, textile fibers,
machinery, trimming components
(hangers, buttons, sewing threads,
hangtags, labels).
Such searchable database engines are widely
used on the Web, where software robots visit
millions of web pages and index entire web
sites.
Software Robot:
Software Robot is the set of coded commands
or instructions that tell a mechanical device and
electronic system, known together as a robot,
what tasks to perform.
. Google’s search engine produces
about 932 000,000 hits in less than
a quarter of a second!
 Server-based hypertext and database
engines designed for the Web are now
widely available and competitively
priced.
 Licenses for use and distribution of
these commercial systems are
expensive,
Categories:
Selecting or limiting the
documents, pages, or fields of text within
which to search for a word or words.
Word relationships:
Searching for words according to their
general proximity and order. For
example, you might search for “Class”
and “Student” only when they occur on
the same page or in the same
paragraph.
Alternates:
Applying an OR criterion to
search for two or more words,
such as “Pepsi” or “Coke.”
Association:
Applying an AND criterion to
search for two or more words,
such as “Pen” and “Ink”.
Truncation:
Searching for a word with any of its
possible suffixes. For example, to find all
occurrences of “girl” and “girls,” you may
need to specify something like girl#.
Multiple character suffixes can be
managed with another specifier, so geo*
might yield “geo,” “geology”.
Intermediate words:
Searching for words that occur
between what might normally be
adjacent words, such as a middle
name or initial in a proper name.
Frequency:
Searching for words based on how
often they appear the more times a
term is mentioned in a document,
the more relevant the document is
to this term.
THE END

More Related Content

PPT
Udhig0613
PDF
Google Research Paper
PDF
Internet and search engine
PPTX
The impact of web on ir
PPT
Internet Basics09
PPT
Internet hunt 101
PPT
Internet hunt 101
PPT
Internet hunt 101
Udhig0613
Google Research Paper
Internet and search engine
The impact of web on ir
Internet Basics09
Internet hunt 101
Internet hunt 101
Internet hunt 101

What's hot (18)

PPTX
Components of a search engine
DOCX
Open source search engine
PDF
Internet, web browser, search engines
PPT
Unique Author IDs
PPT
Searching The Internet
PPT
Deep Web
PPT
Semantic Web Austin Yahoo
PDF
Session5
PDF
An introduction to Semantic Web and Linked Data
PPTX
Consuming Linked Data 4/5 Semtech2011
PPTX
Web search vs ir
PPT
Online Research
PPTX
Online research
PPT
Phrase Based Indexing
PPTX
Search engines & effective searching on the web
PDF
Open Bibliography, Citations and Scholarship
PPT
Internet Research: Finding Websites, Blogs, Wikis, and More
Components of a search engine
Open source search engine
Internet, web browser, search engines
Unique Author IDs
Searching The Internet
Deep Web
Semantic Web Austin Yahoo
Session5
An introduction to Semantic Web and Linked Data
Consuming Linked Data 4/5 Semtech2011
Web search vs ir
Online Research
Online research
Phrase Based Indexing
Search engines & effective searching on the web
Open Bibliography, Citations and Scholarship
Internet Research: Finding Websites, Blogs, Wikis, and More
Ad

Similar to hypertext (20)

PPTX
Chapter 2.pptx multimedia and the uses inlife
PPT
Understanding Seo At A Glance
PPT
PPT
The Internet
PPTX
Henry stewart dam2010_taxonomicsearch_markohurst
PPTX
Introtointernet1
PPT
DM110 - Week 10 - Semantic Web / Web 3.0
PDF
Technical Whitepaper: A Knowledge Correlation Search Engine
PPTX
lessonhypertextandintertext-220308014510.pptx
PPT
Business Research Methods. search strategies for online databases
PPTX
Lesson hypertext and intertext
PPT
Web Search Engine
PPT
Taxonomy made easy
PDF
Extracting and Reducing the Semantic Information Content of Web Documents to ...
PPT
Doing a Literature Review - Part 2
PDF
Content Analyst - Conceptualizing LSI Based Text Analytics White Paper
PPT
Phrase Based Indexing and Information Retrivel
PPTX
Introduction to internet.
PPTX
Controlled Vocabulary
PPTX
Reading and Writing Skills 11 quarter 4 melc 1
Chapter 2.pptx multimedia and the uses inlife
Understanding Seo At A Glance
The Internet
Henry stewart dam2010_taxonomicsearch_markohurst
Introtointernet1
DM110 - Week 10 - Semantic Web / Web 3.0
Technical Whitepaper: A Knowledge Correlation Search Engine
lessonhypertextandintertext-220308014510.pptx
Business Research Methods. search strategies for online databases
Lesson hypertext and intertext
Web Search Engine
Taxonomy made easy
Extracting and Reducing the Semantic Information Content of Web Documents to ...
Doing a Literature Review - Part 2
Content Analyst - Conceptualizing LSI Based Text Analytics White Paper
Phrase Based Indexing and Information Retrivel
Introduction to internet.
Controlled Vocabulary
Reading and Writing Skills 11 quarter 4 melc 1
Ad

Recently uploaded (20)

PPTX
CURRICULAM DESIGN engineering FOR CSE 2025.pptx
PPTX
Information Storage and Retrieval Techniques Unit III
PPTX
Safety Seminar civil to be ensured for safe working.
PPT
INTRODUCTION -Data Warehousing and Mining-M.Tech- VTU.ppt
PDF
86236642-Electric-Loco-Shed.pdf jfkduklg
PPT
Introduction, IoT Design Methodology, Case Study on IoT System for Weather Mo...
PPTX
Artificial Intelligence
PPTX
MET 305 2019 SCHEME MODULE 2 COMPLETE.pptx
PPT
introduction to datamining and warehousing
PDF
COURSE DESCRIPTOR OF SURVEYING R24 SYLLABUS
PPTX
UNIT 4 Total Quality Management .pptx
PDF
III.4.1.2_The_Space_Environment.p pdffdf
PPTX
UNIT - 3 Total quality Management .pptx
PDF
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
PDF
Integrating Fractal Dimension and Time Series Analysis for Optimized Hyperspe...
PDF
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
PPT
A5_DistSysCh1.ppt_INTRODUCTION TO DISTRIBUTED SYSTEMS
PPTX
6ME3A-Unit-II-Sensors and Actuators_Handouts.pptx
PPTX
Current and future trends in Computer Vision.pptx
PPTX
introduction to high performance computing
CURRICULAM DESIGN engineering FOR CSE 2025.pptx
Information Storage and Retrieval Techniques Unit III
Safety Seminar civil to be ensured for safe working.
INTRODUCTION -Data Warehousing and Mining-M.Tech- VTU.ppt
86236642-Electric-Loco-Shed.pdf jfkduklg
Introduction, IoT Design Methodology, Case Study on IoT System for Weather Mo...
Artificial Intelligence
MET 305 2019 SCHEME MODULE 2 COMPLETE.pptx
introduction to datamining and warehousing
COURSE DESCRIPTOR OF SURVEYING R24 SYLLABUS
UNIT 4 Total Quality Management .pptx
III.4.1.2_The_Space_Environment.p pdffdf
UNIT - 3 Total quality Management .pptx
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
Integrating Fractal Dimension and Time Series Analysis for Optimized Hyperspe...
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
A5_DistSysCh1.ppt_INTRODUCTION TO DISTRIBUTED SYSTEMS
6ME3A-Unit-II-Sensors and Actuators_Handouts.pptx
Current and future trends in Computer Vision.pptx
introduction to high performance computing

hypertext

  • 2. Hypertext: Hypertext is text displayed on a computer or other electronic devices with references (hyperlinks) to other text which the reader can immediately access.
  • 3. Using Hypertext:  Hypertext documents are interconnected by hyperlinks, which are typically activated by a mouse click.  Apart from text, the term "hypertext" is also sometimes used to describe tables, images, presentational content and other database fashion.
  • 4. Fashion Database: A “fashion database" is one that collects, organizes, and displays information regarding apparel, shoes, and/or fashion accessories. It may possibly include information regarding fabrics, textile fibers, machinery, trimming components (hangers, buttons, sewing threads, hangtags, labels).
  • 5. Such searchable database engines are widely used on the Web, where software robots visit millions of web pages and index entire web sites. Software Robot: Software Robot is the set of coded commands or instructions that tell a mechanical device and electronic system, known together as a robot, what tasks to perform.
  • 6. . Google’s search engine produces about 932 000,000 hits in less than a quarter of a second!
  • 7.  Server-based hypertext and database engines designed for the Web are now widely available and competitively priced.  Licenses for use and distribution of these commercial systems are expensive,
  • 8. Categories: Selecting or limiting the documents, pages, or fields of text within which to search for a word or words.
  • 9. Word relationships: Searching for words according to their general proximity and order. For example, you might search for “Class” and “Student” only when they occur on the same page or in the same paragraph.
  • 10. Alternates: Applying an OR criterion to search for two or more words, such as “Pepsi” or “Coke.”
  • 11. Association: Applying an AND criterion to search for two or more words, such as “Pen” and “Ink”.
  • 12. Truncation: Searching for a word with any of its possible suffixes. For example, to find all occurrences of “girl” and “girls,” you may need to specify something like girl#. Multiple character suffixes can be managed with another specifier, so geo* might yield “geo,” “geology”.
  • 13. Intermediate words: Searching for words that occur between what might normally be adjacent words, such as a middle name or initial in a proper name.
  • 14. Frequency: Searching for words based on how often they appear the more times a term is mentioned in a document, the more relevant the document is to this term.