
样式: 排序: IF: - GO 导出 标记为已读
-
From Foundations to GPT in Text Classification: A Comprehensive Survey on Current Approaches and Future Trends Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2025-4-16
Marco Siino, Ilenia Tinnirello, Marco La CasciaText classification stands as a cornerstone within the realm of Natural Language Processing (NLP), particularly when viewed through computer science and engineering. The past decade has seen deep learning revolutionize text classification, propelling advancements in text retrieval, categorization, information extraction, and summarization. The scholarly literature includes datasets, models, and evaluation
-
Search as Learning Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2025-3-10
Kelsey Urgo, Jaime ArguelloSearch systems are often designed to support simple look-up tasks, such as fact-finding and navigation tasks. However, people increasingly use search engines to complete tasks that require deeper learning. In recent years, the search as learning (SAL) research community has argued that search systems should also be designed to support information-seeking tasks that involve complex learning as an important
-
Understanding and Mitigating Gender Bias in Information Retrieval Systems Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2025-2-9
Shirin Seyedsalehi, Amin Bigdeli, Negar Arabzadeh, Batool AlMousawi, Zack Marshall, Morteza Zihayat, Ebrahim BagheriGender bias is a pervasive issue that continues to influence various aspects of society, including the outcomes of information retrieval (IR) systems. As these systems become increasingly integral to accessing and navigating the vast amounts of information available today, the need to understand and mitigate gender bias within them is paramount. This monograph provides a comprehensive examination of
-
Mathematical Information Retrieval: Search and Question Answering Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2025-1-27
Richard Zanibbi, Behrooz Mansouri, Anurag AgarwalMathematical information is essential for technical work, but its creation, interpretation, and search are challenging. To help address these challenges, researchers have developed multimodal search engines and mathematical question answering systems. This monograph begins with a simple framework characterizing the information tasks that people and systems perform as we work to answer math-related
-
Information Discovery in E-commerce Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2024-12-30
Zhaochun Ren, Xiangnan He, Dawei Yin, Maarten de RijkeElectronic commerce, or e-commerce, is the buying and selling of goods and services, or the transmitting of funds or data online. E-commerce platforms come in many kinds, with global players such as Amazon, Airbnb, Alibaba, Booking.com, eBay, and JD.com and platforms targeting specific geographic regions such as Bol.com and Flipkart.com. Information retrieval has a natural role to play in e-commerce
-
Fairness in Search Systems Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2024-12-23
Yi Fang, Ashudeep Singh, Zhiqiang TaoSearch engines play a crucial role in organizing and delivering information to billions of users worldwide. However, these systems often reflect and amplify existing societal biases and stereotypes through their search results and rankings. This concern has prompted researchers to investigate methods for measuring and reducing algorithmic bias, with the goal of developing more equitable search systems
-
Multi-hop Question Answering Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2024-6-12
Vaibhav Mavi, Anubhav Jangra, Jatowt AdamThe task of Question Answering (QA) has attracted significant research interest for a long time. Its relevance to language understanding and knowledge retrieval tasks, along with the simple setting, makes the task of QA crucial for strong AI systems. Recent success on simple QA tasks has shifted the focus to more complex settings. Among these, Multi-Hop QA (MHQA) is one of the most researched tasks
-
User Simulation for Evaluating Information Access Systems Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2024-6-12
Krisztian Balog, ChengXiang ZhaiInformation access systems, such as search engines, recommender systems, and conversational assistants, have become integral to our daily lives as they help us satisfy our information needs. However, evaluating the effectiveness of these systems presents a long-standing and complex scientific challenge. This challenge is rooted in the difficulty of assessing a system’s overall effectiveness in assisting
-
Conversational Information Seeking Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2023-8-2
Hamed Zamani, Johanne R. Trippas, Jeff Dalton, Filip RadlinskiConversational information seeking (CIS) is concerned with a sequence of interactions between one or more users and an information system. Interactions in CIS are primarily based on natural language dialogue, while they may include other types of interactions, such as click, touch, and body gestures. This monograph provides a thorough overview of CIS definitions, applications, interactions, interfaces
-
Perspectives of Neurodiverse Participants in Interactive Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2023-7-26
Laurianne Sitbon, Gerd Berget, Margot BreretonThis monograph offers a survey of work to date to inform how interactions in information retrieval systems could afford inclusion of users who are neurodiverse. This existing work is positioned within a range of philosophies, frameworks and epistemologies which frame the importance of including neurodiverse users in all stages of research and development of Interactive Information Retrieval (IIR) systems
-
Efficient and Effective Tree-based and Neural Learning to Rank Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2023-5-14
Sebastian Bruch, Claudio Lucchese, Franco Maria NardiniAs information retrieval researchers, we not only develop algorithmic solutions to hard problems, but we also insist on a proper, multifaceted evaluation of ideas. The literature on the fundamental topic of retrieval and ranking, for instance, has a rich history of studying the effectiveness of indexes, retrieval algorithms, and complex machine learning rankers, while at the same time quantifying their
-
Quantum-Inspired Neural Language Representation, Matching and Understanding Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2023-4-18
Peng Zhang, Hui Gao, Jing Zhang, Dawei SongThe introduction of Quantum Theory (QT) provides a unified mathematical framework for Information Retrieval (IR). Compared with the classical IR framework, the quantuminspired IR framework is based on user-centered modeling methods to model non-classical cognitive phenomena in human relevance judgment in the IR process. With the increase of data and computing resources, neural IR methods have been
-
Pre-training Methods in Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2022-8-17
Yixing Fan, Xiaohui Xie, Yinqiong Cai, Jia Chen, Xinyu Ma, Xiangsheng Li, Ruqing Zhang, Jiafeng GuoThe core of information retrieval (IR) is to identify relevant information from large-scale resources and return it as a ranked list to respond to user’s information need. In recent years, the resurgence of deep learning has greatly advanced this field and leads to a hot topic named NeuIR (i.e., neural information retrieval), especially the paradigm of pre-training methods (PTMs). Owing to sophisticated
-
Fairness in Information Access Systems Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2022-7-10
Michael D. Ekstrand, Anubrata Das, Robin Burke, Fernando DiazRecommendation, information retrieval, and other information access systems pose unique challenges for investigating and applying the fairness and non-discrimination concepts that have been developed for studying other machine learning systems. While fair information access shares many commonalities with fair classification, there are important differences: the multistakeholder nature of information
-
Deep Learning for Dialogue Systems: Chit-Chat and Beyond Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2022-6-15
Rui Yan, Juntao Li, Zhou YuWith the rapid progress of deep neural models and the explosion of available data resources, dialogue systems that supports extensive topics and chit-chat conversations are emerging as a research hot-spot for many communities, e.g., information retrieval (IR), natural language processing (NLP), and machine learning (ML). Building a chit-chat system with retrieval techniques is an essential task and
-
Search Interface Design and Evaluation Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2021-12-12
Chang Liu, Ying-Hsang Liu, Jingjing Liu, Ralf BierigThis monograph reviews research on the design and evaluation of search user interfaces that has been published within the past 10 years. Our primary goal is to integrate state-of-the-art research in the areas of information seeking behavior, information retrieval, and human-computer interaction on the topic of search interface. Specifically, this monograph (1) describes the history and background of
-
Psychology-informed Recommender Systems Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2021-7-30
Elisabeth Lex, Dominik Kowald, Paul Seitlinger, Thi Ngoc Trang Tran, Alexander Felfernig, Markus SchedlPersonalized recommender systems have become indispensable in today’s online world. Most of today’s recommendation algorithms are data-driven and based on behavioral data. While such systems can produce useful recommendations, they are often uninterpretable, black-box models, which do not incorporate the underlying cognitive reasons for user behavior in the algorithms’ design. The aim of this survey
-
Search and Discovery in Personal Email Collections Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2021-7-5
Michael Bendersky, Xuanhui Wang, Marc Najork, Donald MetzlerEmail has been an essential communication medium for many years. As a result, the information accumulated in our mailboxes has become valuable for all of our personal and professional activities. For years, researchers have been developing interfaces, models and algorithms to facilitate search, discovery and organization of email data. In this survey, we attempt to bring together these diverse research
-
Extracting, Mining and Predicting Users’ Interests from Social Media Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2020-11-4
Fattane Zarrinkalam, Stefano Faralli, Guangyuan Piao, Ebrahim BagheriThe abundance of user generated content on social media provides the opportunity to build models that are able to accurately and effectively extract, mine and predict users’ interests with the hopes of enabling more effective user engagement, better quality delivery of appropriate services and higher user satisfaction. While traditional methods for building user profiles relied on AI-based preference
-
Deep Learning for Matching in Search and Recommendation Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2020-7-13
Jun Xu, Xiangnan He, Hang LiMatching is a key problem in both search and recommendation, which is to measure the relevance of a document to a query or the interest of a user to an item. Machine learning has been exploited to address the problem, which learns a matching function based on input representations and from labeled data, also referred to as “learning to match”. In recent years, efforts have been made to develop deep
-
Knowledge Graphs: An Information Retrieval Perspective Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2020-10-30
Ridho Reinanda, Edgar Meij, Maarten de RijkeIn this survey, we provide an overview of the literature on knowledge graphs (KGs) in the context of information retrieval (IR). Modern IR systems can benefit from information available in KGs in multiple ways, independent of whether the KGs are publicly available or proprietary ones. We provide an overview of the components required when building IR systems that leverage KGs and use a taskoriented
-
Explainable Recommendation: A Survey and New Perspectives Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2020-3-10
Yongfeng Zhang, Xu ChenExplainable recommendation attempts to develop models that generate not only high-quality recommendations but also intuitive explanations. The explanations may either be post-hoc or directly come from an explainable model (also called interpretable or transparent model in some contexts). Explainable recommendation tries to address the problem of why: by providing explanations to users or system designers
-
Information Retrieval: The Early Years Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2019-7-8
Donna HarmanInformation retrieval, the science behind search engines, had its birth in the late 1950s. Its forbearers came from library science, mathematics and linguistics, with later input from computer science. The early work dealt with finding better ways to index text, and then using new algorithms to search these (mostly) automatically built indexes. Like all computer applications, however, the theory and
-
Bandit Algorithms in Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2019-5-22
Dorota GlowackaBandit algorithms, named after casino slot machines sometimes known as “one-armed bandits”, fall into a broad category of stochastic scheduling problems. In the setting with multiple arms, each arm generates a reward with a given probability. The gambler’s aim is to find the arm producing the highest payoff and then continue playing in order to accumulate the maximum reward possible. However, having
-
Neural Approaches to Conversational AI Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2019-2-20
Jianfeng Gao, Michel Galley, Lihong LiThe present paper surveys neural approaches to conversational AI that have been developed in the last few years. We group conversational systems into three categories: (1) question answering agents, (2) task-oriented dialogue agents, and (3) chatbots. For each category, we present a review of state-of-the-art neural approaches, draw the connection between them and traditional approaches, and discuss
-
An Introduction to Neural Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2018-12-22
Bhaskar Mitra, Nick CraswellNeural ranking models for information retrieval (IR) use shallow or deep neural networks to rank search results in response to a query. Traditional learning to rank models employ supervised machine learning (ML) techniques—including neural networks—over hand-crafted IR features. By contrast, more recently proposed neural models learn representations of language from raw text that can bridge the gap
-
Efficient Query Processing for Scalable Web Search Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2018-12-22
Nicola Tonellotto, Craig Macdonald, Iadh OunisSearch engines are exceptionally important tools for accessing information in today’s world. In satisfying the information needs of millions of users, the effectiveness (the quality of the search results) and the efficiency (the speed at which the results are returned to the users) of a search engine are two goals that form a natural trade-off, as techniques that improve the effectiveness of the search
-
Geographic Information Retrieval: Progress and Challenges in Spatial Search of Text Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2018-2-20
Ross S. Purves, Paul Clough, Christopher B. Jones, Mark H. Hall, Vanessa MurdockSignificant amounts of information available today contain references to places on earth. Traditionally such information has been held as structured data and was the concern of Geographic Information Systems (GIS). However, increasing amounts of data in the form of unstructured text are available for indexing and retrieval that also contain spatial references. This monograph describes the field of
-
Web Forum Retrieval and Text Analytics: A Survey Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2018-1-2
Doris Hoogeveen, Li Wang, Timothy Baldwin, Karin M. VerspoorThis survey presents an overview of information retrieval, natural language processing and machine learning research that makes use of forum data, including both discussion forums and community questionanswering (cQA) archives. The focus is on automated analysis, with the goal of gaining a better understanding of the data and its users. We discuss the different strategies used for both retrieval tasks
-
Display Advertising with Real-Time Bidding (RTB) and Behavioural Targeting Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2017-7-23
Jun Wang, Weinan Zhang, Shuai YuanThe most significant progress in recent years in online display advertising is what is known as the Real-Time Bidding (RTB) mechanism to buy and sell ads. RTB essentially facilitates buying an individual ad impression in real time while it is still being generated from a user’s visit. RTB not only scales up the buying process by aggregating a large amount of available inventories across publishers
-
Applications of Topic Models Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2017-7-19
Jordan Boyd-Graber, Yuening Hu, David MimnoHow can a single person understand what’s going on in a collection of millions of documents? This is an increasingly common problem: sifting through an organization’s e-mails, understanding a decade worth of newspapers, or characterizing a scientific field’s research. Topic models are a statistical framework that help users understand large document collections: not just to find individual documents
-
Searching the Enterprise Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2017-7-11
Udo Kruschwitz, Charlie HullSearch has become ubiquitous but that does not mean that search has been solved. Enterprise search, which is broadly speaking the use of information retrieval technology to find information within organisations, is a good example to illustrate this. It is an area that is of huge importance for businesses, yet has attracted relatively little academic interest. This monograph will explore the main issues
-
Aggregated Search Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2017-3-5
Jaime ArguelloThe goal of aggregated search is to provide integrated search across multiple heterogeneous search services in a unified interface—a single query box and a common presentation of results. In the web search domain, aggregated search systems are responsible for integrating results from specialized search services, or verticals, alongside the core web results. For example, search portals such as Google
-
A Survey of Query Auto Completion in Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2016-9-18
Fei Cai, Maarten de RijkeAbstract In information retrieval, query auto completion (QAC), also known as type-ahead [Xiao et al., 2013, Cai et al., 2014b] and auto-complete suggestion [Jain and Mishne, 2010], refers to the following functionality: given a prefix consisting of a number of characters entered into a search box, the user interface proposes alternative ways of extending the prefix to a full query. Ranking query completions
-
Online Evaluation for Information Retrieval Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2016-6-21
Katja Hofmann, Lihong Li, Filip RadlinskiOnline evaluation is one of the most common approaches to measure the effectiveness of an information retrieval system. It involves fielding the information retrieval system to real users, and observing these users’ interactions in-situ while they engage with the system. This allows actual users with real world information needs to play an important part in assessing retrieval quality. As such, online
-
Semantic Search on Text and Knowledge Bases Found. Trends Inf. Ret. (IF 8.3) Pub Date : 2016-6-21
Hannah Bast, Björn Buchhold, Elmar HaussmannThis article provides a comprehensive overview of the broad area of semantic search on text and knowledge bases. In a nutshell, semantic search is “search with meaning”. This “meaning” can refer to various parts of the search process: understanding the query (instead of just finding matches of its components in the data), understanding the data (instead of just searching it for such matches), or representing