Evaluation by Alignment Evaluation by Alignment
Synthesis Lectures on Computer Science

Evaluation by Alignment

A Framework for Robust End-to-End NLP Assessment

    • US$34.99
    • US$34.99

출판사 설명

This book presents a novel, alignment-based evaluation framework that tackles a persistent challenge in natural language processing (NLP): how to fairly and accurately evaluate systems when preprocessing steps such as tokenization and sentence boundary detection (SBD) misalign between gold-standard and system outputs. By introducing the jointly preprocessed evaluation algorithm (jp-algorithm), this book proposes a solution that brings precision and flexibility to the assessment of modern, end-to-end NLP systems. Traditional evaluation methods assume identical sentence and token boundaries between references and hypotheses, making them poorly suited to real-world data and increasingly common end-to-end architectures. The jp-algorithm addresses these shortcomings by introducing a linear-time alignment strategy inspired by techniques in machine translation. This method allows for robust comparisons even when input segmentation differs, enabling reliable evaluation in tasks such as preprocessing, constituency parsing, and grammatical error correction (GEC). The book explores how misaligned preprocessing impacts standard evaluation metrics including PARSEVAL for constituency parsing and F0.5 for GEC and provides empirical solutions for preserving evaluation accuracy without sacrificing methodological integrity. By offering detailed case studies, formal algorithmic descriptions, and practical implementations, this book equips researchers, tool developers, and instructors with a generalizable framework for improving NLP evaluation practices. This book is intended for researchers, graduate students, and professionals working in NLP, corpus linguistics, and computational linguistics.

In addition, this book:

Introduces a novel alignment-based algorithm to improve evaluation accuracy in NLP tasks
Bridges theoretical insights with real-world constraints towards inclusive and error-resilient evaluation standards
Aids readers developing or evaluating multilingual or end-to-end language processing systems

장르
컴퓨터 및 인터넷
출시일
2026년
7월 3일
언어
EN
영어
길이
156
페이지
출판사
Springer Nature Switzerland
판매자
Springer Nature B.V.
크기
10.3
MB
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