{"id":2513101,"date":"2023-03-12T13:36:05","date_gmt":"2023-03-12T13:36:05","guid":{"rendered":"https:\/\/platoai.gbaglobal.org\/overview-of-extractive-text-summarization-techniques\/"},"modified":"2023-03-19T15:24:11","modified_gmt":"2023-03-19T19:24:11","slug":"overview-of-extractive-text-summarization-techniques","status":"publish","type":"platowire","link":"https:\/\/platoai.gbaglobal.org\/platowire\/overview-of-extractive-text-summarization-techniques\/","title":{"rendered":"Overview of Extractive Text Summarization Techniques"},"content":{"rendered":"

Extractive text summarization is a process of automatically generating a summary of a given text document by extracting the most important sentences or phrases from the original text. This technique is widely used in various applications such as summarizing news articles, web pages, and scientific papers. Extractive summarization techniques can be divided into two categories: rule-based and statistical-based methods. <\/p>\n

Rule-based methods are based on the idea of selecting the most relevant sentences from the original text. These methods use a set of predefined rules to identify the most important sentences from the text. For example, the most frequent words or phrases in the text can be identified and used as the summary. Other rules include selecting the longest sentences, selecting sentences with the highest frequency of keywords, or selecting sentences that contain the most information. <\/p>\n

Statistical-based methods use natural language processing (NLP) techniques to identify the most important sentences from the text. These methods use algorithms such as Latent Semantic Analysis (LSA) and Latent Dirichlet Allocation (LDA) to identify the most relevant sentences from the text. The algorithms analyze the text and identify the sentences that contain the most important information. <\/p>\n

In addition to these two categories, there are also hybrid methods that combine both rule-based and statistical-based approaches. These methods use a combination of both approaches to generate more accurate summaries. <\/p>\n

Extractive text summarization techniques are widely used in various applications such as summarizing news articles, web pages, and scientific papers. These techniques can help reduce the amount of time required to read long documents, improve document understanding, and provide concise summaries of complex topics. Extractive summarization techniques can also be used to generate summaries for large collections of documents, such as news articles or scientific papers.<\/p>\n