We describe the human triage scenario envisioned in the Cross-Lingual Information Retrieval (CLIR) problem of the [REDUCT] Program. The overall goal is to maximize the quality of the set of documents that is given to a bilingual analyst, as measured by the AQWV score. The initial set of source documents that are retrieved by the CLIR system is summarized in English and presented to human judges who attempt to remove the irrelevant documents (false alarms); the resulting documents are then presented to the analyst. First, we describe the AQWV performance measure and show that, in our experience, if the acceptance threshold of the CLIR component has been optimized to maximize AQWV, the loss in AQWV due to false alarms is relatively constant across many conditions, which also limits the possible gain that can be achieved by any post filter (such as human judgments) that removes false alarms. Second, we analyze the likely benefits for the triage operation as a function of the initial CLIR AQWV score and the ability of the human judges to remove false alarms without removing relevant documents. Third, we demonstrate that we can increase the benefit for human judgments by combining the human judgment scores with the original document scores returned by the automatic CLIR system.
[1]
Richard M. Schwartz,et al.
The 2019 BBN Cross-lingual Information Retrieval System
,
2020,
CLSSTS@LREC.
[2]
Richard M. Schwartz,et al.
Score normalization and system combination for improved keyword spotting
,
2013,
2013 IEEE Workshop on Automatic Speech Recognition and Understanding.
[3]
Christopher D. Manning,et al.
Introduction to Information Retrieval
,
2010,
J. Assoc. Inf. Sci. Technol..
[4]
Richard M. Schwartz,et al.
The 2016 BBN Georgian telephone speech keyword spotting system
,
2017,
2017 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).