Long-Form Information Retrieval for Enterprise Matchmaking

Pengyuan Li, G. Ren, Anna Lisa Gentile, Chad DeLuca, Daniel Tan, Sandeep Gopisetty
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Abstract

Understanding customer requirements is a key success factor for both business-to-consumer (B2C) and business-to-business (B2B) enterprises. In a B2C context, most requirements are directly related to products and therefore expressed in keyword-based queries. In comparison, B2B requirements contain more information about customer needs and as such the queries are often in a longer form. Such long-form queries pose significant challenges to the information retrieval task in B2B context. In this work, we address the long-form information retrieval challenges by proposing a combination of (i) traditional retrieval methods, to leverage the lexical match from the query, and (ii) state-of-the-art sentence transformers, to capture the rich context in the long queries. We compare our method against traditional TF-IDF and BM25 models on an internal dataset of 12,368 pairs of long-form requirements and products sold. The evaluation shows promising results and provides directions for future work.
面向企业配对的长格式信息检索
了解客户需求是企业对消费者(B2C)和企业对企业(B2B)企业成功的关键因素。在B2C上下文中,大多数需求与产品直接相关,因此用基于关键字的查询表示。相比之下,B2B需求包含更多关于客户需求的信息,因此查询通常采用较长的形式。这种长格式查询对B2B上下文中的信息检索任务提出了重大挑战。在这项工作中,我们通过提出(i)传统检索方法(利用查询中的词汇匹配)和(ii)最先进的句子转换器(捕获长查询中的丰富上下文)的组合来解决长格式信息检索的挑战。我们将我们的方法与传统的TF-IDF和BM25模型在12368对长期需求和销售产品的内部数据集上进行比较。评价结果显示出良好的效果,为今后的工作提供了方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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