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Main Authors: Gody, Reem, Abdelghaffar, Mohamed, Jabreel, Mohammed, Tawfik, Ahmed
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.17336
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author Gody, Reem
Abdelghaffar, Mohamed
Jabreel, Mohammed
Tawfik, Ahmed
author_facet Gody, Reem
Abdelghaffar, Mohamed
Jabreel, Mohammed
Tawfik, Ahmed
contents Large language models (LLMs) have showcased remarkable capabilities in conversational AI, enabling open-domain responses in chat-bots, as well as advanced processing of conversations like summarization, intent classification, and insights generation. However, these models are resource-intensive, demanding substantial memory and computational power. To address this, we propose a cost-effective solution that filters conversational snippets of interest for LLM processing, tailored to the target downstream application, rather than processing every snippet. In this work, we introduce an innovative approach that leverages knowledge distillation from LLMs to develop an intent-based filter for multi-party conversations, optimized for compute power constrained environments. Our method combines different strategies to create a diverse multi-party conversational dataset, that is annotated with the target intents and is then used to fine-tune the MobileBERT model for multi-label intent classification. This model achieves a balance between efficiency and performance, effectively filtering conversation snippets based on their intents. By passing only the relevant snippets to the LLM for further processing, our approach significantly reduces overall operational costs depending on the intents and the data distribution as demonstrated in our experiments.
format Preprint
id arxiv_https___arxiv_org_abs_2503_17336
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Efficient Intent-Based Filtering for Multi-Party Conversations Using Knowledge Distillation from LLMs
Gody, Reem
Abdelghaffar, Mohamed
Jabreel, Mohammed
Tawfik, Ahmed
Computation and Language
Artificial Intelligence
Large language models (LLMs) have showcased remarkable capabilities in conversational AI, enabling open-domain responses in chat-bots, as well as advanced processing of conversations like summarization, intent classification, and insights generation. However, these models are resource-intensive, demanding substantial memory and computational power. To address this, we propose a cost-effective solution that filters conversational snippets of interest for LLM processing, tailored to the target downstream application, rather than processing every snippet. In this work, we introduce an innovative approach that leverages knowledge distillation from LLMs to develop an intent-based filter for multi-party conversations, optimized for compute power constrained environments. Our method combines different strategies to create a diverse multi-party conversational dataset, that is annotated with the target intents and is then used to fine-tune the MobileBERT model for multi-label intent classification. This model achieves a balance between efficiency and performance, effectively filtering conversation snippets based on their intents. By passing only the relevant snippets to the LLM for further processing, our approach significantly reduces overall operational costs depending on the intents and the data distribution as demonstrated in our experiments.
title Efficient Intent-Based Filtering for Multi-Party Conversations Using Knowledge Distillation from LLMs
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2503.17336