Javascript must be enabled to continue!
Temporal Information Retrieval
View through CrossRef
Temporal dynamics and how they impact upon various components of information retrieval (IR) systems have received a large share of attention in the last decade. In particular, the study of relevance in information retrieval can now be framed within the so-called temporal IR approaches, which explain how user behavior, document content and scale vary with time, and how we can use them in our favor in order to improve retrieval effectiveness. This survey provides a comprehensive overview of temporal IR approaches, centered on the following questions: what are temporal dynamics, why do they occur, and when and how to leverage temporal information throughout the search cycle and architecture. We first explain the general and wide aspects associated to temporal dynamics by focusing on the web domain, from content and structural changes to variations of user behavior and interactions. Next, we pinpoint several research issues and the impact of such temporal characteristics on search, essentially regarding processing dynamic content, temporal query analysis and time-aware ranking. We also address particular aspects of temporal information extraction (for instance, how to timestamp documents and generate temporal profiles of text). To this end, we present existing temporal search engines and applications in related research areas, e.g., exploration, summarization, and clustering of search results, as well as future event retrieval and prediction, where the time dimension also plays an important role.
Title: Temporal Information Retrieval
Description:
Temporal dynamics and how they impact upon various components of information retrieval (IR) systems have received a large share of attention in the last decade.
In particular, the study of relevance in information retrieval can now be framed within the so-called temporal IR approaches, which explain how user behavior, document content and scale vary with time, and how we can use them in our favor in order to improve retrieval effectiveness.
This survey provides a comprehensive overview of temporal IR approaches, centered on the following questions: what are temporal dynamics, why do they occur, and when and how to leverage temporal information throughout the search cycle and architecture.
We first explain the general and wide aspects associated to temporal dynamics by focusing on the web domain, from content and structural changes to variations of user behavior and interactions.
Next, we pinpoint several research issues and the impact of such temporal characteristics on search, essentially regarding processing dynamic content, temporal query analysis and time-aware ranking.
We also address particular aspects of temporal information extraction (for instance, how to timestamp documents and generate temporal profiles of text).
To this end, we present existing temporal search engines and applications in related research areas, e.
g.
, exploration, summarization, and clustering of search results, as well as future event retrieval and prediction, where the time dimension also plays an important role.
Related Results
Role of the Frontal Lobes in the Propagation of Mesial Temporal Lobe Seizures
Role of the Frontal Lobes in the Propagation of Mesial Temporal Lobe Seizures
Summary: The depth ictal electroencephalographic (EEG) propagation sequence accompanying 78 complex partial seizures of mesial temporal origin was reviewed in 24 patients (15 from...
Improving Sentence Retrieval Using Sequence Similarity
Improving Sentence Retrieval Using Sequence Similarity
Sentence retrieval is an information retrieval technique that aims to find sentences corresponding to an information need. It is used for tasks like question answering (QA) or nove...
Neuromodulatory signaling in hippocampus‐dependent memory retrieval
Neuromodulatory signaling in hippocampus‐dependent memory retrieval
ABSTRACTConsiderable advances have been made toward understanding the molecular signaling events that underlie memory acquisition and consolidation. In contrast, less is known abou...
A New Remote Sensing Image Retrieval Method Based on CNN and YOLO
A New Remote Sensing Image Retrieval Method Based on CNN and YOLO
<>Retrieving remote sensing images plays a key role in RS fields, which activates researchers to design a highly effective extraction method of image high-level features. How...
New Research Progress in Image Retrieval
New Research Progress in Image Retrieval
Image retrieval is generally divided into two categories: one is text-based Image Retrieval; another is content-based Image Retrieval. Early image retrieval technology is mainly ba...
The Multi-Temporal Database of Planetary Image Data (MUTED): A Web-Tool to Support Surface Change Analyses on Mars, Moon, and Mercury
The Multi-Temporal Database of Planetary Image Data (MUTED): A Web-Tool to Support Surface Change Analyses on Mars, Moon, and Mercury
<p><strong>Introduction:</strong></p>
<p>The Multi-Temporal Database of Planetary Image Data (MUTED) is a comp...
Neural dynamics of relational memory retrieval across eye movements
Neural dynamics of relational memory retrieval across eye movements
Abstract
Relational memory retrieval entails a dynamic interplay between eye movements and neural activity, yet the temporal coordination of these processes remains unc...
Improving Neural Retrieval with Contrastive Learning
Improving Neural Retrieval with Contrastive Learning
In recent years, neural retrieval models have shown remarkable progress in improving the efficiency and accuracy of information retrieval systems. However, challenges remain in eff...

