CLSep 27, 2024

Co-Trained Retriever-Generator Framework for Question Generation in Earnings Calls

arXiv:2409.18677v11 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the need for automated question generation in professional domains like earnings calls, which is incremental as it adapts NLP methods to a specific, underserved context.

The paper tackled the problem of generating potential questions for earnings call conferences by introducing a multi-question generation task, achieving notable improvements in accuracy, consistency, and perplexity.

In diverse professional environments, ranging from academic conferences to corporate earnings calls, the ability to anticipate audience questions stands paramount. Traditional methods, which rely on manual assessment of an audience's background, interests, and subject knowledge, often fall short - particularly when facing large or heterogeneous groups, leading to imprecision and inefficiency. While NLP has made strides in text-based question generation, its primary focus remains on academic settings, leaving the intricate challenges of professional domains, especially earnings call conferences, underserved. Addressing this gap, our paper pioneers the multi-question generation (MQG) task specifically designed for earnings call contexts. Our methodology involves an exhaustive collection of earnings call transcripts and a novel annotation technique to classify potential questions. Furthermore, we introduce a retriever-enhanced strategy to extract relevant information. With a core aim of generating a spectrum of potential questions that analysts might pose, we derive these directly from earnings call content. Empirical evaluations underscore our approach's edge, revealing notable excellence in the accuracy, consistency, and perplexity of the questions generated.

Foundations

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