The performances of two different procedures for calculating the likelihood ratio (LR) for forensic text comparison (FTC) are empirically compared. One is the multivariate kernel density (MVKD) procedure with so-called lexical features. The MVKD procedure has been successfully applied to various types of evidence, including texts. The other is the procedure based on character N-grams. N-gram is a widely-used, robust probabilistic language model. The effectiveness of character N-grams has been reported in authorship analysis, however, to the best of my knowledge, it has not yet been applied to LR-based FTC. In this study, the log-likelihood-ratio-cost (Cllr), which is an appropriate assessment metric for LR-based systems, is used t...
This study is an investigation into the effect of within-speaker sample size (token number) on a lik...
An experiment in Forensic Text Comparison (FTC) within the Likelihood Ratio (LR) framework is descri...
This chapter is built on two studies: Ishihara (2011) "A Forensic Authorship Classification in SMS M...
This study is a pilot research that explores the effectiveness of a likelihood ratio (LR)-based fore...
This is a comparative study to empirically investigate the performances of three different procedure...
The performances of two different procedures for calculating the likelihood ratio (LR) for forensic ...
We compared the performances of two procedures for calculating the likelihood ratio (LR) on the same...
Two procedures for the calculation of forensic likelihood ratios were tested on the same set of acou...
An acoustic-phonetic forensic-voice-comparison system was constructed using the time-averaged forman...
This study is an investigation into the effect of sample size on a likelihood ratio (LR) based foren...
This study sets out to find the most reliable method for loglikelihood-ratio (LLR) calculation under...
This study investigates the use of long-term formant distributions (LTFDs) as a discriminant in fore...
Across forensic speech science, the likelihood ratio (LR) is increasingly becoming accepted as the l...
Non-contemporaneous speech samples from 27 male speakers of Australian English were compared in a fo...
An experiment in forensic text comparison (FTC) within the likelihood ratio (LR) framework is descri...
This study is an investigation into the effect of within-speaker sample size (token number) on a lik...
An experiment in Forensic Text Comparison (FTC) within the Likelihood Ratio (LR) framework is descri...
This chapter is built on two studies: Ishihara (2011) "A Forensic Authorship Classification in SMS M...
This study is a pilot research that explores the effectiveness of a likelihood ratio (LR)-based fore...
This is a comparative study to empirically investigate the performances of three different procedure...
The performances of two different procedures for calculating the likelihood ratio (LR) for forensic ...
We compared the performances of two procedures for calculating the likelihood ratio (LR) on the same...
Two procedures for the calculation of forensic likelihood ratios were tested on the same set of acou...
An acoustic-phonetic forensic-voice-comparison system was constructed using the time-averaged forman...
This study is an investigation into the effect of sample size on a likelihood ratio (LR) based foren...
This study sets out to find the most reliable method for loglikelihood-ratio (LLR) calculation under...
This study investigates the use of long-term formant distributions (LTFDs) as a discriminant in fore...
Across forensic speech science, the likelihood ratio (LR) is increasingly becoming accepted as the l...
Non-contemporaneous speech samples from 27 male speakers of Australian English were compared in a fo...
An experiment in forensic text comparison (FTC) within the likelihood ratio (LR) framework is descri...
This study is an investigation into the effect of within-speaker sample size (token number) on a lik...
An experiment in Forensic Text Comparison (FTC) within the Likelihood Ratio (LR) framework is descri...
This chapter is built on two studies: Ishihara (2011) "A Forensic Authorship Classification in SMS M...