A Probabilistic Approach to String Transformation

Authors

  • Vinothh V UG Student, Department of CSE, Bharath University, Chennai
  • Thaneshwaran R UG Student, Department of CSE, Bharath University, Chennai
  • Venkatesan KGS Asst.Professor, Department of CSE, Bharath University, Chennai

Keywords:

String Transformation, Log linear model, ALGORITHM

Abstract

The string model has been applied to a wide range of problems, including spelling correction. These models consist of two components: a source model and a channel model. Very little research has gone into improving the channel model for spelling correction. We Describes a new channel model for spelling correction, based on generic string to string edits. Using this model gives significant performance improvements compared to previously proposed models. We propose a novel and probabilistic approach to string transformation, which is both accurate and efficient. In this approach includes the use of a log linear model, a method for training the model, and an algorithm for generating the top k candidates, whether there is or is not a predefined dictionary. Log linear model is defined as a conditional probability distribution of an output string and a rule set for the transformation conditioned on an input string. The string generation algorithm based on pruning is guaranteed to generate the optimal top k candidates. The proposed method is applied to correction of spelling errors in queries as well as reformulation of queries in web search. Experimental results on large scale data show that the proposed approach is very accurate and efficient improving upon existing methods in terms of accuracy and efficiency in different settings.

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Published

2024-02-26

How to Cite

Vinothh, V., Thaneshwaran, R., & Venkatesan, K. G. S. (2024). A Probabilistic Approach to String Transformation. COMPUSOFT: An International Journal of Advanced Computer Technology, 4(05), 1818–1821. Retrieved from https://ijact.in/index.php/j/article/view/318

Issue

Section

Review Article

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