Aiimi Insight Engine Florina
User GuidesAiimi
  • Introducing Aiimi Insight Engine
  • Architecture
    • Overview and Key Concepts
    • Search Flows
      • Search Flow Types
      • Smart Filtering
      • Query and Prompt Classification
      • Search Algorithms
      • Extractive and Generative Models
    • Hosting Options
    • Architecture and How It Works
      • Agent Servers
        • Security Agent
        • Source Agent
        • Content Agent
        • Enrichment Agent
        • Job Agent
        • OCR Agent
        • Migration Agent
        • Tika Agent
      • Repository
        • Data Node
        • Proxy Node
        • Kibana Node
      • Gateway and User Interface
      • Document and Data Sources
    • Deployment Options
    • Security
      • User Security
      • Data and Document Security
        • Progressive Access
        • Privileged Access
      • Source System Security
      • Firewalling
      • Agent Servers
        • Security Agent
        • Source Agent
        • Content Agent
        • Enrichment Agent
        • Job Agent
        • OCR Agent
        • Migration Agent
        • Tika Agent
      • Repository
      • Gateway (Web Server)
      • Tools & Utilities
  • Installation
    • Elastic and Kibana Install (Windows)
    • Aiimi Insight Engine Installation (Windows)
      • Installation Security
    • AI Services
      • Prerequisites
      • AI Enrichment Service
        • Installation and Setup
        • Enabling Enrichment Steps
        • Using AI Enrichment Steps
        • Performance and Concurrency
      • AI Model Service
        • Installation and Setup
        • Enabling Providers
        • Private Generative AI
        • Azure Open AI
      • Configuration of Logging
      • Offline Set-up of Models
      • Using SSL
      • Running as a Service (Windows)
      • Using GPUs
      • AI and Semantic Search Set Up
        • Open & Closed Book AI
        • Semantic Search
          • Vectors for Semantic Search
          • Source Configuration
          • Sentence Transformer Models
          • Enrichment
          • Kibana
          • Final Search Flow
    • HTML Cleaner Service
  • Control Hub
    • Configurations
      • Config Management
      • Security Configurations
        • Security - General
        • Security - Source
          • Active Directory
          • Atlassian
          • Azure Active Directory
          • Builtin Security
          • Miro Security
          • Google Directory
          • Slack Security
        • Security - Sync
        • Security - Agents
        • Security - Scheduling
      • Source Configurations
        • Source - General
        • Source - Source
          • Alfresco Kafka
          • Azure Blob Storage
          • BBC Monitoring
          • Big Query Cataloguer
          • BIM360
          • CSV Data Loader
          • Confluence
          • Content Server
          • Data File Cataloguer
          • Document Store
          • DocuSign
          • Dropbox
          • Exchange 365
          • Filesystem
          • Google Bucket
          • Google Drive
          • Google Vault
          • Jira
          • JSON Data Loader
          • Livelink
          • Microsoft Teams
          • Mimecast
          • Miro
          • ODBC Data Loader
          • PowerBi Cataloguer
          • Reuters Connect
          • ShareFile
          • SharePoint
          • SQL Server Cataloguer
          • Slack
          • Versioned Document Store
          • Websites
          • XML Data Loader
        • Source - Crawl
        • Source - Agents
        • Source - Schedule
        • Source - Advanced
      • Enrichment Configurations
        • Creating a Pipeline
          • General
          • Steps
            • AccessMiner
            • AI Classification
            • Anonymiser
            • CAD Extractor
            • Checksum
            • Content Retrieval
            • Copy
            • Data Rule Processor
            • Delete
            • Email Extractor
            • Entity Rule Processor
            • External Links
            • Geotag
            • Google NLP Extractor
            • Google Vision Extractor
            • Metrics Calculation
            • Microsoft Vision Extractor
            • OcrRest
            • Office Metadata
            • PCI Extractor
            • REST
            • Set Document Risk
            • Text Cleaner
            • Tika Text Extraction
            • Trie Entity Extractor
            • Update Metadata
          • Filters
          • Agents
          • Schedule
          • Advanced
      • OCR Engine
      • Job Configurations
        • General
        • Job
          • AutomatedSearchJob
          • Command Job
          • ElasticJob
          • Extended Metrics Job
          • GoogleVaultSAR
          • Google Drive Last Access Date
          • Nightly Events Processor Job
          • Notifications Processor Job
          • Portal Sync Job
          • Purge Job
          • Text Content Merge Job
        • Output
        • Agents
        • Scheduling
      • Migration Configuration
        • General
        • Filter
        • Metadata Mappings
        • Agents
        • Scheduling
        • Advanced
    • Credentials
      • Create a Credential
      • Find a Credential
      • Edit a Credential
      • Delete a Credential
    • Mappings
      • Entities
        • Managing Groups
        • Create an Entity
        • Managing Entities
      • Models
        • Create a New Model
        • Find a Model
        • Enable or Disable a Model
      • Vectors
      • Rank Features
    • Featured Links
    • AI Settings
      • Classifications
      • Class
      • Class Rules
      • AI Classification
    • Global Settings
      • General
        • Stackdriver
        • Document Recommendations
        • Searchable PDF Storage
        • Versioning
        • Results
        • Marking Useful Results
        • Folder Browsing
        • Cascading Search
        • Search Suggestions
        • Delve Settings
        • Miscellaneous
      • Authentication
      • Application Access
      • Search Relevancy
        • Core Settings
        • Makers Algorithm
        • Filename Boost Layer
        • Minimum Matching Terms Filter
        • Field Boost
        • Modified Date Boosting
        • Hit Highlighting
        • Why My Search Matched
        • Data Search Strategy
      • Search Performance
      • Filtering
      • Thumbnails
      • Presets
      • Code of Conduct
      • Metrics
      • Viewer
        • Redacting Information
        • Watermarking
      • SAR
        • Importing Data For A SAR
        • SAR Disclosure Document Storage
        • Getting SAR data from Google Vault
        • SAR Access
        • SAR File Status
      • Collections
      • Disclosure Portal
        • Disclosure Portal Set Up
        • SARs From The Portal
        • Email Delivery Settings
          • Delivery Settings
          • Brand Settings
          • Customise Emails
        • SMS Delivery Settings
        • Requestor Message Limit
        • Attachment Configuration
        • Password Configuration
        • File Scanner Configurator
      • Visualisations
        • Related Result Connections Diagram
        • Event Timeline
        • Timeline Lens Activity Chart
        • Relationship Map
      • Notifications
      • Map Lens
      • App
      • Theming
        • General
        • Layout
        • Colours
      • User Avatar
      • Related Results
      • OData API
      • Bulk Search
        • Managing a Bulk Search
      • Search Flows
        • Create a Search Flow
          • General
          • Query Classification Step
          • Search Steps
          • Model Steps
      • Uploads
      • Security
    • User Settings
    • Stats
      • Data Views
  • API Guides
    • Insight API Guide
      • Swagger Documentation
      • Trying Some Endpoints
      • Search Filter
      • Hits / Items
      • Inspecting REST Calls
    • Data Science API Guide
      • REST Interface
        • Login
        • Datasets
        • Fields
        • Field Statistics
        • Search
        • Scroll
        • Update
      • Python Wrapper
        • Login
        • Datasets
        • Fields
        • Field Statistics
        • Search
        • Query Builders
        • Scroll
        • Scroll Search
        • Update Single Document
        • Bulk Update
    • Creating a Native Enrichment Step
      • Creating an Enrichment Step
        • Creating the Core Classes
        • Extending our Enrichment Step
        • Adding a Configuration Template
        • Adding the Enrichment Step
        • Creating an Enrichment Pipeline
      • Other Tasks
        • Entities, Metadata and Data
        • Accessing the Repository
      • Example Code
      • Troubleshooting
    • Creating a Python Enrichment Step
      • Creating an Enrichment Step
        • Running the Example from Command Line
        • Running the Example
      • Creating Your Own Step
      • Adding or Changing Entities, Metadata
  • whitepapers and explainers
    • From a Billion To One – Mastering Relevancy
    • Methods for Text Summarization
      • Application
      • Technology Methods
      • Commercial Tools
      • Key Research Centres
      • Productionisation
      • Related Areas of Text Analytics
      • Conclusion
      • References
Powered by GitBook
On this page
  1. whitepapers and explainers

Methods for Text Summarization

Automatic summarization refers to the algorithmic shortening of a communication. The result should effectively convey the important points in a shorter form, be complete, readable and follow the vocabulary of the original. This allows a user to consume critical information as efficiently as possible. Summarization appears in virtually every form of consumable media, for example:

  • Abstracts of research papers

  • Synopses of books and films

  • Headlines of articles

  • Minutes of a meeting

  • Sound bites of politicians and correspondents for news media.

Text summarization is of particular interest because of its relative simplicity to approach computationally, compared to the large potential gain in productivity. For this reason, vendors such as Google have heavily invested in research in this area and now feature summaries that many of us use every day: answering a user’s query directly on the search page without the need to ever click through to a source.

Text summarization can be broadly categorized into two approaches:

  1. Extractive, wherein the key phrases are identified and presented verbatim, with no additional content generated by the algorithm.

  2. Abstractive, where the whole text is interpreted, and a summarized output is generated using language that may not have been present in the original.

Extractive techniques have the advantage of being far easier to implement due to their method of scoring and concatenating existing phrases rather than creating new ones. For this reason, more research is in this area and there are more available toolsets for extractive summarization. The drawback of this approach is mostly in the inconsistent fluency of the summary.

Abstractive techniques are more complex and generally require more adventurous algorithms and computing power. They are usually highly domain-specific, with little transferability to other types of text. However, for their intended domain, they can provide highly accurate and readable summaries.

This whitepaper will discuss the most popular approaches to automatic text summarization; their implementations, practicality and relative strengths and weaknesses. The topic of text summarization will be considered in its wider business and historical context, and an overview of the leading institutions in this field will be provided. An overview of the available commercial and open-source options will be provided, along with a summary of related fields in Natural Language Processing.

PreviousFrom a Billion To One – Mastering RelevancyNextApplication