scholarly journals Automatic Text Summarization Using a Machine Learning Approach

Author(s):  
Joel Larocca Neto ◽  
Alex A. Freitas ◽  
Celso A. A. Kaestner
Author(s):  
Jovi D’Silva ◽  
Uzzal Sharma

<span lang="EN-US">Automatic text summarization has gained immense popularity in research. Previously, several methods have been explored for obtaining effective text summarization outcomes. However, most of the work pertains to the most popular languages spoken in the world. Through this paper, we explore the area of extractive automatic text summarization using deep learning approach and apply it to Konkani language, which is a low-resource language as there are limited resources, such as data, tools, speakers and/or experts in Konkani. In the proposed technique, Facebook’s fastText <br /> pre-trained word embeddings are used to get a vector representation for sentences. Thereafter, deep multi-layer perceptron technique is employed, as a supervised binary classification task for auto-generating summaries using the feature vectors. Using pre-trained fastText word embeddings eliminated the requirement of a large training set and reduced training time. The system generated summaries were evaluated against the ‘gold-standard’ human generated summaries with recall-oriented understudy for gisting evaluation (ROUGE) toolkit. The results thus obtained showed that performance of the proposed system matched closely to the performance of the human annotators in generating summaries.</span>


2017 ◽  
Vol 10 (8) ◽  
pp. 83-90
Author(s):  
Amita Arora ◽  
Akanksha Diwedy ◽  
Manjeet Singh ◽  
Naresh Chauhan

Webology ◽  
2021 ◽  
Vol 18 (05) ◽  
pp. 1184-1190
Author(s):  
Abinaya N ◽  
Anand R ◽  
Arunkumar T ◽  
Sameema Begam S

Automatic Text Summarization (ATS) is the key challenge in the area of Natural Language Processing (NLP). It deals with generalizing a summary from a given text without losing the vital information. This is a contemporary area because of exponential content growth in internet and applied in summarizing the content available in books, newsletters, internal document analysis, patent research, e-learning etc. Various machine learning approaches are used in order to achieve the performance of human-generated summaries. The system fails to perform at few areas like checking grammatical errors and paraphrasing the sentences after the summary creation. This work provides a brief view on methods and approaches used in ATS.


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