Text retrieval systems often return large sets of documents, particularly when applied to large collections. Stopping criteria can reduce the number of these documents that need to be manually evaluated for relevance by predicting when a suitable level of recall has been achieved. In this work, a novel method for determining a stopping criterion is proposed that models the rate at which relevant documents occur using a Poisson process. This method allows a user to specify both a minimum desired level of recall to achieve and a desired probability of having achieved it. We evaluate our method on a public dataset and compare it with previous techniques for determining stopping criteria
International audienceThis paper presents a cognitive computational model of the way people read a p...
Recent years have seen an increased interest in understanding memory-retrieval dynamics and, in part...
An important component of many, if not all, real-world retrieval tasks is the decision to terminate ...
Technology Assisted Review (TAR), which aims to reduce the effort required to screen collections of ...
Searching naturally involves stopping points, both at a query level (how far down the ranked list sh...
Searching naturally involves stopping points, both at a query level (how far down the ranked list sh...
Searching for information when using a computerised retrieval system is a complex and inherently int...
Technology Assisted Review (TAR), which aims to reduce the effort required to screen collections of ...
An important component of many, if not all, real-word retrieval tasks is the decision to terminate m...
Book synopsis: An important component of many, if not all, real-word retrieval tasks is the decisio...
Technology Assisted Review (TAR) aims to minimise the manual judgements required to identify relevan...
Current models and measures of the \emph{Interactive Information Retrieval (IIR)} process typically ...
Nearly every memory retrieval episode ends with a decision to terminate memory search. Yet, no resea...
While continuous active learning algorithms have proven effective in finding most of the relevant do...
How do we calculate how many relevant documents are in a collection? In this abstract, we discuss ou...
International audienceThis paper presents a cognitive computational model of the way people read a p...
Recent years have seen an increased interest in understanding memory-retrieval dynamics and, in part...
An important component of many, if not all, real-world retrieval tasks is the decision to terminate ...
Technology Assisted Review (TAR), which aims to reduce the effort required to screen collections of ...
Searching naturally involves stopping points, both at a query level (how far down the ranked list sh...
Searching naturally involves stopping points, both at a query level (how far down the ranked list sh...
Searching for information when using a computerised retrieval system is a complex and inherently int...
Technology Assisted Review (TAR), which aims to reduce the effort required to screen collections of ...
An important component of many, if not all, real-word retrieval tasks is the decision to terminate m...
Book synopsis: An important component of many, if not all, real-word retrieval tasks is the decisio...
Technology Assisted Review (TAR) aims to minimise the manual judgements required to identify relevan...
Current models and measures of the \emph{Interactive Information Retrieval (IIR)} process typically ...
Nearly every memory retrieval episode ends with a decision to terminate memory search. Yet, no resea...
While continuous active learning algorithms have proven effective in finding most of the relevant do...
How do we calculate how many relevant documents are in a collection? In this abstract, we discuss ou...
International audienceThis paper presents a cognitive computational model of the way people read a p...
Recent years have seen an increased interest in understanding memory-retrieval dynamics and, in part...
An important component of many, if not all, real-world retrieval tasks is the decision to terminate ...