Cobol2Vec: Learning Representations of Cobol code
There has been a steadily growing interest in development of novel methods to learn a representation of a given input data and subsequently using them for several downstream tasks. The field of natural language processing has seen a significant improvement in different tasks by incorporating pre-tra...
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creator | Kulshrestha, Ankit Lele, Vishwas |
description | There has been a steadily growing interest in development of novel methods to
learn a representation of a given input data and subsequently using them for
several downstream tasks. The field of natural language processing has seen a
significant improvement in different tasks by incorporating pre-trained
embeddings into their pipelines. Recently, these methods have been applied to
programming languages with a view to improve developer productivity. In this
paper, we present an unsupervised learning approach to encode old mainframe
languages into a fixed dimensional vector space. We use COBOL as our motivating
example and create a corpus and demonstrate the efficacy of our approach in a
code-retrieval task on our corpus. |
doi_str_mv | 10.48550/arxiv.2201.09448 |
format | Article |
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learn a representation of a given input data and subsequently using them for
several downstream tasks. The field of natural language processing has seen a
significant improvement in different tasks by incorporating pre-trained
embeddings into their pipelines. Recently, these methods have been applied to
programming languages with a view to improve developer productivity. In this
paper, we present an unsupervised learning approach to encode old mainframe
languages into a fixed dimensional vector space. We use COBOL as our motivating
example and create a corpus and demonstrate the efficacy of our approach in a
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learn a representation of a given input data and subsequently using them for
several downstream tasks. The field of natural language processing has seen a
significant improvement in different tasks by incorporating pre-trained
embeddings into their pipelines. Recently, these methods have been applied to
programming languages with a view to improve developer productivity. In this
paper, we present an unsupervised learning approach to encode old mainframe
languages into a fixed dimensional vector space. We use COBOL as our motivating
example and create a corpus and demonstrate the efficacy of our approach in a
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learn a representation of a given input data and subsequently using them for
several downstream tasks. The field of natural language processing has seen a
significant improvement in different tasks by incorporating pre-trained
embeddings into their pipelines. Recently, these methods have been applied to
programming languages with a view to improve developer productivity. In this
paper, we present an unsupervised learning approach to encode old mainframe
languages into a fixed dimensional vector space. We use COBOL as our motivating
example and create a corpus and demonstrate the efficacy of our approach in a
code-retrieval task on our corpus.</abstract><doi>10.48550/arxiv.2201.09448</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Programming Languages |
title | Cobol2Vec: Learning Representations of Cobol code |
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