Saved in:
Bibliographic Details
Main Authors: Goren, Shani, Kalinsky, Oren, Stav, Tomer, Rapoport, Yuri, Fairstein, Yaron, Yazdi, Ram, Cohen, Nachshon, Libov, Alexander, Kushilevitz, Guy
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.18377
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910859016536064
author Goren, Shani
Kalinsky, Oren
Stav, Tomer
Rapoport, Yuri
Fairstein, Yaron
Yazdi, Ram
Cohen, Nachshon
Libov, Alexander
Kushilevitz, Guy
author_facet Goren, Shani
Kalinsky, Oren
Stav, Tomer
Rapoport, Yuri
Fairstein, Yaron
Yazdi, Ram
Cohen, Nachshon
Libov, Alexander
Kushilevitz, Guy
contents The rise of LLMs has deflected a growing portion of human-computer interactions towards LLM-based chatbots. The remarkable abilities of these models allow users to interact using long, diverse natural language text covering a wide range of topics and styles. Phrasing these messages is a time and effort consuming task, calling for an autocomplete solution to assist users. We introduce the task of chatbot interaction autocomplete. We present ChaI-TeA: CHat InTEraction Autocomplete; An autcomplete evaluation framework for LLM-based chatbot interactions. The framework includes a formal definition of the task, coupled with suitable datasets and metrics. We use the framework to evaluate After formally defining the task along with suitable datasets and metrics, we test 9 models on the defined auto completion task, finding that while current off-the-shelf models perform fairly, there is still much room for improvement, mainly in ranking of the generated suggestions. We provide insights for practitioners working on this task and open new research directions for researchers in the field. We release our framework to serve as a foundation for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18377
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ChaI-TeA: A Benchmark for Evaluating Autocompletion of Interactions with LLM-based Chatbots
Goren, Shani
Kalinsky, Oren
Stav, Tomer
Rapoport, Yuri
Fairstein, Yaron
Yazdi, Ram
Cohen, Nachshon
Libov, Alexander
Kushilevitz, Guy
Computation and Language
Artificial Intelligence
Machine Learning
The rise of LLMs has deflected a growing portion of human-computer interactions towards LLM-based chatbots. The remarkable abilities of these models allow users to interact using long, diverse natural language text covering a wide range of topics and styles. Phrasing these messages is a time and effort consuming task, calling for an autocomplete solution to assist users. We introduce the task of chatbot interaction autocomplete. We present ChaI-TeA: CHat InTEraction Autocomplete; An autcomplete evaluation framework for LLM-based chatbot interactions. The framework includes a formal definition of the task, coupled with suitable datasets and metrics. We use the framework to evaluate After formally defining the task along with suitable datasets and metrics, we test 9 models on the defined auto completion task, finding that while current off-the-shelf models perform fairly, there is still much room for improvement, mainly in ranking of the generated suggestions. We provide insights for practitioners working on this task and open new research directions for researchers in the field. We release our framework to serve as a foundation for future research.
title ChaI-TeA: A Benchmark for Evaluating Autocompletion of Interactions with LLM-based Chatbots
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2412.18377