Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

MFD: Multi-Feature Detection of LLM-Generated Text

View through CrossRef
Abstract With the rapid development of large language models, their powerful capabilities have led to their rapid popularity in society. However, it not only brings great convenience to people’s life and work but also provides a favorable tool for criminals to carry out malicious behaviors. Therefore, to prevent the malicious use of large language models, there is a growing demand for a detector that can efffciently discriminate texts generated by large language models. In this paper, Multi-Feature Detection (MFD), a new zero-shot method, is introduced. MFD comprehensively considers log-likelihood, log-rank, entropy, and LLM-Deviation. LLM-Deviation is a new statistical feature proposed in this paper and has a clear distribution difference between texts generated by LLMs and those written by humans. Experiments show MFD is more effective than the existing zero-shot method. MFD improves the detection performance by 1.02 F1 score on average on the HC3-English dataset. In generalization ability, MFD is also very competitive compared with the existing zero-shot method.
Research Square Platform LLC
Title: MFD: Multi-Feature Detection of LLM-Generated Text
Description:
Abstract With the rapid development of large language models, their powerful capabilities have led to their rapid popularity in society.
However, it not only brings great convenience to people’s life and work but also provides a favorable tool for criminals to carry out malicious behaviors.
Therefore, to prevent the malicious use of large language models, there is a growing demand for a detector that can efffciently discriminate texts generated by large language models.
In this paper, Multi-Feature Detection (MFD), a new zero-shot method, is introduced.
MFD comprehensively considers log-likelihood, log-rank, entropy, and LLM-Deviation.
LLM-Deviation is a new statistical feature proposed in this paper and has a clear distribution difference between texts generated by LLMs and those written by humans.
Experiments show MFD is more effective than the existing zero-shot method.
MFD improves the detection performance by 1.
02 F1 score on average on the HC3-English dataset.
In generalization ability, MFD is also very competitive compared with the existing zero-shot method.

Related Results

Short term road network Macroscopic Fundamental Diagram parameters and traffic state prediction based on LSTM
Short term road network Macroscopic Fundamental Diagram parameters and traffic state prediction based on LSTM
Macroscopic Fundamental Diagram (MFD) is widely used in traffic state evaluation due to its description of the macro level of urban road network. This study focuses on the discrimi...
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract Introduction The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...
Regional traffic and trip characteristics simulation and applications for MFD models calibration
Regional traffic and trip characteristics simulation and applications for MFD models calibration
Simulation des caractéristiques du trafic et des déplacements régionaux et applications pour l'étalonnage des modèles MFD Cette thèse étudie comment le paramétrage ...
Human-AI Collaboration in Clinical Reasoning: A UK Replication and Interaction Analysis
Human-AI Collaboration in Clinical Reasoning: A UK Replication and Interaction Analysis
Abstract Objective A paper from Goh et al found that a large language model (LLM) working alone outperformed American clinicians assisted...
Estimation of travel time variation caused by transport infrastructure development
Estimation of travel time variation caused by transport infrastructure development
Purpose The expected benefits of newly developed transportation infrastructures are the saving of travel time and further promoted transport economics. There is a need for a method...
Macroscopic Traffic Dynamics in Urban Networks during Incidents
Macroscopic Traffic Dynamics in Urban Networks during Incidents
The degradation of road network performance due to incidents is a major concern to traffic operators. The development of urban traffic incident management systems requires a compre...
Macroscopic Traffic Dynamics in Urban Networks during Incidents
Macroscopic Traffic Dynamics in Urban Networks during Incidents
The degradation of road network performance due to incidents is a major concern to traffic operators. The development of urban traffic incident management systems requires a compre...
microFLOQ® Direct: a helpful tool for the coronavirus SARS-CoV-2 rapid detection without RNA purification
microFLOQ® Direct: a helpful tool for the coronavirus SARS-CoV-2 rapid detection without RNA purification
Abstract In the context of SARS-Cov-2 virus disease (COVID-19) pandemic, molecular diagnostic tools were rapidly developed as there are fundamental for a rapid detection of...

Back to Top