171 research outputs found

    Modélisation des comportements de recherche basé sur les interactions des utilisateurs

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    Les utilisateurs de systĂšmes d'information divisent normalement les tĂąches en une sĂ©quence de plusieurs Ă©tapes pour les rĂ©soudre. En particulier, les utilisateurs divisent les tĂąches de recherche en sĂ©quences de requĂȘtes, en interagissant avec les systĂšmes de recherche pour mener Ă  bien le processus de recherche d'informations. Les interactions des utilisateurs sont enregistrĂ©es dans des journaux de requĂȘtes, ce qui permet de dĂ©velopper des modĂšles pour apprendre automatiquement les comportements de recherche Ă  partir des interactions des utilisateurs avec les systĂšmes de recherche. Ces modĂšles sont Ă  la base de multiples applications d'assistance aux utilisateurs qui aident les systĂšmes de recherche Ă  ĂȘtre plus interactifs, faciles Ă  utiliser, et cohĂ©rents. Par consĂ©quent, nous proposons les contributions suivantes : un modĂšle neuronale pour apprendre Ă  dĂ©tecter les limites des tĂąches de recherche dans les journaux de requĂȘte ; une architecture de regroupement profond rĂ©current qui apprend simultanĂ©ment les reprĂ©sentations de requĂȘte et regroupe les requĂȘtes en tĂąches de recherche ; un modĂšle non supervisĂ© et indĂ©pendant d'utilisateur pour l'identification des tĂąches de recherche prenant en charge les requĂȘtes dans seize langues ; et un modĂšle de tĂąche de recherche multilingue, une approche non supervisĂ©e qui modĂ©lise simultanĂ©ment l'intention de recherche de l'utilisateur et les tĂąches de recherche. Les modĂšles proposĂ©s amĂ©liorent les mĂ©thodes existantes de modĂ©lisation, en tenant compte de la confidentialitĂ© des utilisateurs, des rĂ©ponses en temps rĂ©el et de l'accessibilitĂ© linguistique. Le respect de la vie privĂ©e de l'utilisateur est une prĂ©occupation majeure, tandis que des rĂ©ponses rapides sont essentielles pour les systĂšmes de recherche qui interagissent avec les utilisateurs en temps rĂ©el, en particulier dans la recherche par conversation. Dans le mĂȘme temps, l'accessibilitĂ© linguistique est essentielle pour aider les utilisateurs du monde entier, qui interagissent avec les systĂšmes de recherche dans de nombreuses langues. Les contributions proposĂ©es peuvent bĂ©nĂ©ficier Ă  de nombreuses applications d'assistance aux utilisateurs, en aidant ces derniers Ă  mieux rĂ©soudre leurs tĂąches de recherche lorsqu'ils accĂšdent aux systĂšmes de recherche pour rĂ©pondre Ă  leurs besoins d'information.Users of information systems normally divide tasks in a sequence of multiple steps to solve them. In particular, users divide search tasks into sequences of queries, interacting with search systems to carry out the information seeking process. User interactions are registered on search query logs, enabling the development of models to automatically learn search patterns from the users' interactions with search systems. These models underpin multiple user assisting applications that help search systems to be more interactive, user-friendly, and coherent. User assisting applications include query suggestion, the ranking of search results based on tasks, query reformulation analysis, e-commerce applications, retrieval of advertisement, query-term prediction, mapping of queries to search tasks, and so on. Consequently, we propose the following contributions: a neural model for learning to detect search task boundaries in query logs; a recurrent deep clustering architecture that simultaneously learns query representations through self-training, and cluster queries into groups of search tasks; Multilingual Graph-Based Clustering, an unsupervised, user-agnostic model for search task identification supporting queries in sixteen languages; and Language-agnostic Search Task Model, an unsupervised approach that simultaneously models user search intent and search tasks. Proposed models improve on existing methods for modeling user interactions, taking into account user privacy, realtime response times, and language accessibility. User privacy is a major concern in Ethics for intelligent systems, while fast responses are critical for search systems interacting with users in realtime, particularly in conversational search. At the same time, language accessibility is essential to assist users worldwide, who interact with search systems in many languages. The proposed contributions can benefit many user assisting applications, helping users to better solve their search tasks when accessing search systems to fulfill their information needs

    Familial hypercholesterolaemia in children and adolescents from 48 countries: a cross-sectional study

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    Background: Approximately 450 000 children are born with familial hypercholesterolaemia worldwide every year, yet only 2·1% of adults with familial hypercholesterolaemia were diagnosed before age 18 years via current diagnostic approaches, which are derived from observations in adults. We aimed to characterise children and adolescents with heterozygous familial hypercholesterolaemia (HeFH) and understand current approaches to the identification and management of familial hypercholesterolaemia to inform future public health strategies. Methods: For this cross-sectional study, we assessed children and adolescents younger than 18 years with a clinical or genetic diagnosis of HeFH at the time of entry into the Familial Hypercholesterolaemia Studies Collaboration (FHSC) registry between Oct 1, 2015, and Jan 31, 2021. Data in the registry were collected from 55 regional or national registries in 48 countries. Diagnoses relying on self-reported history of familial hypercholesterolaemia and suspected secondary hypercholesterolaemia were excluded from the registry; people with untreated LDL cholesterol (LDL-C) of at least 13·0 mmol/L were excluded from this study. Data were assessed overall and by WHO region, World Bank country income status, age, diagnostic criteria, and index-case status. The main outcome of this study was to assess current identification and management of children and adolescents with familial hypercholesterolaemia. Findings: Of 63 093 individuals in the FHSC registry, 11 848 (18·8%) were children or adolescents younger than 18 years with HeFH and were included in this study; 5756 (50·2%) of 11 476 included individuals were female and 5720 (49·8%) were male. Sex data were missing for 372 (3·1%) of 11 848 individuals. Median age at registry entry was 9·6 years (IQR 5·8-13·2). 10 099 (89·9%) of 11 235 included individuals had a final genetically confirmed diagnosis of familial hypercholesterolaemia and 1136 (10·1%) had a clinical diagnosis. Genetically confirmed diagnosis data or clinical diagnosis data were missing for 613 (5·2%) of 11 848 individuals. Genetic diagnosis was more common in children and adolescents from high-income countries (9427 [92·4%] of 10 202) than in children and adolescents from non-high-income countries (199 [48·0%] of 415). 3414 (31·6%) of 10 804 children or adolescents were index cases. Familial-hypercholesterolaemia-related physical signs, cardiovascular risk factors, and cardiovascular disease were uncommon, but were more common in non-high-income countries. 7557 (72·4%) of 10 428 included children or adolescents were not taking lipid-lowering medication (LLM) and had a median LDL-C of 5·00 mmol/L (IQR 4·05-6·08). Compared with genetic diagnosis, the use of unadapted clinical criteria intended for use in adults and reliant on more extreme phenotypes could result in 50-75% of children and adolescents with familial hypercholesterolaemia not being identified. Interpretation: Clinical characteristics observed in adults with familial hypercholesterolaemia are uncommon in children and adolescents with familial hypercholesterolaemia, hence detection in this age group relies on measurement of LDL-C and genetic confirmation. Where genetic testing is unavailable, increased availability and use of LDL-C measurements in the first few years of life could help reduce the current gap between prevalence and detection, enabling increased use of combination LLM to reach recommended LDL-C targets early in life

    Spatial, temporal, and demographic patterns in prevalence of smoking tobacco use and attributable disease burden in 204 countries and territories, 1990-2019 : a systematic analysis from the Global Burden of Disease Study 2019

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    Background Ending the global tobacco epidemic is a defining challenge in global health. Timely and comprehensive estimates of the prevalence of smoking tobacco use and attributable disease burden are needed to guide tobacco control efforts nationally and globally. Methods We estimated the prevalence of smoking tobacco use and attributable disease burden for 204 countries and territories, by age and sex, from 1990 to 2019 as part of the Global Burden of Diseases, Injuries, and Risk Factors Study. We modelled multiple smoking-related indicators from 3625 nationally representative surveys. We completed systematic reviews and did Bayesian meta-regressions for 36 causally linked health outcomes to estimate non-linear dose-response risk curves for current and former smokers. We used a direct estimation approach to estimate attributable burden, providing more comprehensive estimates of the health effects of smoking than previously available. Findings Globally in 2019, 1.14 billion (95% uncertainty interval 1.13-1.16) individuals were current smokers, who consumed 7.41 trillion (7.11-7.74) cigarette-equivalents of tobacco in 2019. Although prevalence of smoking had decreased significantly since 1990 among both males (27.5% [26. 5-28.5] reduction) and females (37.7% [35.4-39.9] reduction) aged 15 years and older, population growth has led to a significant increase in the total number of smokers from 0.99 billion (0.98-1.00) in 1990. Globally in 2019, smoking tobacco use accounted for 7.69 million (7.16-8.20) deaths and 200 million (185-214) disability-adjusted life-years, and was the leading risk factor for death among males (20.2% [19.3-21.1] of male deaths). 6.68 million [86.9%] of 7.69 million deaths attributable to smoking tobacco use were among current smokers. Interpretation In the absence of intervention, the annual toll of 7.69 million deaths and 200 million disability-adjusted life-years attributable to smoking will increase over the coming decades. Substantial progress in reducing the prevalence of smoking tobacco use has been observed in countries from all regions and at all stages of development, but a large implementation gap remains for tobacco control. Countries have a dear and urgent opportunity to pass strong, evidence-based policies to accelerate reductions in the prevalence of smoking and reap massive health benefits for their citizens. Copyright (C) 2021 The Author(s). Published by Elsevier Ltd.Peer reviewe

    Reducing the environmental impact of surgery on a global scale: systematic review and co-prioritization with healthcare workers in 132 countries

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    Abstract Background Healthcare cannot achieve net-zero carbon without addressing operating theatres. The aim of this study was to prioritize feasible interventions to reduce the environmental impact of operating theatres. Methods This study adopted a four-phase Delphi consensus co-prioritization methodology. In phase 1, a systematic review of published interventions and global consultation of perioperative healthcare professionals were used to longlist interventions. In phase 2, iterative thematic analysis consolidated comparable interventions into a shortlist. In phase 3, the shortlist was co-prioritized based on patient and clinician views on acceptability, feasibility, and safety. In phase 4, ranked lists of interventions were presented by their relevance to high-income countries and low–middle-income countries. Results In phase 1, 43 interventions were identified, which had low uptake in practice according to 3042 professionals globally. In phase 2, a shortlist of 15 intervention domains was generated. In phase 3, interventions were deemed acceptable for more than 90 per cent of patients except for reducing general anaesthesia (84 per cent) and re-sterilization of ‘single-use’ consumables (86 per cent). In phase 4, the top three shortlisted interventions for high-income countries were: introducing recycling; reducing use of anaesthetic gases; and appropriate clinical waste processing. In phase 4, the top three shortlisted interventions for low–middle-income countries were: introducing reusable surgical devices; reducing use of consumables; and reducing the use of general anaesthesia. Conclusion This is a step toward environmentally sustainable operating environments with actionable interventions applicable to both high– and low–middle–income countries

    Global, regional, and national progress towards Sustainable Development Goal 3.2 for neonatal and child health: all-cause and cause-specific mortality findings from the Global Burden of Disease Study 2019

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    Background Sustainable Development Goal 3.2 has targeted elimination of preventable child mortality, reduction of neonatal death to less than 12 per 1000 livebirths, and reduction of death of children younger than 5 years to less than 25 per 1000 livebirths, for each country by 2030. To understand current rates, recent trends, and potential trajectories of child mortality for the next decade, we present the Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2019 findings for all-cause mortality and cause-specific mortality in children younger than 5 years of age, with multiple scenarios for child mortality in 2030 that include the consideration of potential effects of COVID-19, and a novel framework for quantifying optimal child survival. Methods We completed all-cause mortality and cause-specific mortality analyses from 204 countries and territories for detailed age groups separately, with aggregated mortality probabilities per 1000 livebirths computed for neonatal mortality rate (NMR) and under-5 mortality rate (USMR). Scenarios for 2030 represent different potential trajectories, notably including potential effects of the COVID-19 pandemic and the potential impact of improvements preferentially targeting neonatal survival. Optimal child survival metrics were developed by age, sex, and cause of death across all GBD location-years. The first metric is a global optimum and is based on the lowest observed mortality, and the second is a survival potential frontier that is based on stochastic frontier analysis of observed mortality and Healthcare Access and Quality Index. Findings Global U5MR decreased from 71.2 deaths per 1000 livebirths (95% uncertainty interval WI] 68.3-74-0) in 2000 to 37.1 (33.2-41.7) in 2019 while global NMR correspondingly declined more slowly from 28.0 deaths per 1000 live births (26.8-29-5) in 2000 to 17.9 (16.3-19-8) in 2019. In 2019,136 (67%) of 204 countries had a USMR at or below the SDG 3.2 threshold and 133 (65%) had an NMR at or below the SDG 3.2 threshold, and the reference scenario suggests that by 2030,154 (75%) of all countries could meet the U5MR targets, and 139 (68%) could meet the NMR targets. Deaths of children younger than 5 years totalled 9.65 million (95% UI 9.05-10.30) in 2000 and 5.05 million (4.27-6.02) in 2019, with the neonatal fraction of these deaths increasing from 39% (3.76 million 95% UI 3.53-4.021) in 2000 to 48% (2.42 million; 2.06-2.86) in 2019. NMR and U5MR were generally higher in males than in females, although there was no statistically significant difference at the global level. Neonatal disorders remained the leading cause of death in children younger than 5 years in 2019, followed by lower respiratory infections, diarrhoeal diseases, congenital birth defects, and malaria. The global optimum analysis suggests NMR could be reduced to as low as 0.80 (95% UI 0.71-0.86) deaths per 1000 livebirths and U5MR to 1.44 (95% UI 1-27-1.58) deaths per 1000 livebirths, and in 2019, there were as many as 1.87 million (95% UI 1-35-2.58; 37% 95% UI 32-43]) of 5.05 million more deaths of children younger than 5 years than the survival potential frontier. Interpretation Global child mortality declined by almost half between 2000 and 2019, but progress remains slower in neonates and 65 (32%) of 204 countries, mostly in sub-Saharan Africa and south Asia, are not on track to meet either SDG 3.2 target by 2030. Focused improvements in perinatal and newborn care, continued and expanded delivery of essential interventions such as vaccination and infection prevention, an enhanced focus on equity, continued focus on poverty reduction and education, and investment in strengthening health systems across the development spectrum have the potential to substantially improve USMR. Given the widespread effects of COVID-19, considerable effort will be required to maintain and accelerate progress. Copyright (C) 2021 The Author(s). Published by Elsevier Ltd

    Modelling patterns of search behaviours from user interactions

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    Les utilisateurs de systĂšmes d'information divisent normalement les tĂąches en une sĂ©quence de plusieurs Ă©tapes pour les rĂ©soudre. En particulier, les utilisateurs divisent les tĂąches de recherche en sĂ©quences de requĂȘtes, en interagissant avec les systĂšmes de recherche pour mener Ă  bien le processus de recherche d'informations. Les interactions des utilisateurs sont enregistrĂ©es dans des journaux de requĂȘtes, ce qui permet de dĂ©velopper des modĂšles pour apprendre automatiquement les comportements de recherche Ă  partir des interactions des utilisateurs avec les systĂšmes de recherche. Ces modĂšles sont Ă  la base de multiples applications d'assistance aux utilisateurs qui aident les systĂšmes de recherche Ă  ĂȘtre plus interactifs, faciles Ă  utiliser, et cohĂ©rents. Par consĂ©quent, nous proposons les contributions suivantes : un modĂšle neuronale pour apprendre Ă  dĂ©tecter les limites des tĂąches de recherche dans les journaux de requĂȘte ; une architecture de regroupement profond rĂ©current qui apprend simultanĂ©ment les reprĂ©sentations de requĂȘte et regroupe les requĂȘtes en tĂąches de recherche ; un modĂšle non supervisĂ© et indĂ©pendant d'utilisateur pour l'identification des tĂąches de recherche prenant en charge les requĂȘtes dans seize langues ; et un modĂšle de tĂąche de recherche multilingue, une approche non supervisĂ©e qui modĂ©lise simultanĂ©ment l'intention de recherche de l'utilisateur et les tĂąches de recherche. Les modĂšles proposĂ©s amĂ©liorent les mĂ©thodes existantes de modĂ©lisation, en tenant compte de la confidentialitĂ© des utilisateurs, des rĂ©ponses en temps rĂ©el et de l'accessibilitĂ© linguistique. Le respect de la vie privĂ©e de l'utilisateur est une prĂ©occupation majeure, tandis que des rĂ©ponses rapides sont essentielles pour les systĂšmes de recherche qui interagissent avec les utilisateurs en temps rĂ©el, en particulier dans la recherche par conversation. Dans le mĂȘme temps, l'accessibilitĂ© linguistique est essentielle pour aider les utilisateurs du monde entier, qui interagissent avec les systĂšmes de recherche dans de nombreuses langues. Les contributions proposĂ©es peuvent bĂ©nĂ©ficier Ă  de nombreuses applications d'assistance aux utilisateurs, en aidant ces derniers Ă  mieux rĂ©soudre leurs tĂąches de recherche lorsqu'ils accĂšdent aux systĂšmes de recherche pour rĂ©pondre Ă  leurs besoins d'information.Users of information systems normally divide tasks in a sequence of multiple steps to solve them. In particular, users divide search tasks into sequences of queries, interacting with search systems to carry out the information seeking process. User interactions are registered on search query logs, enabling the development of models to automatically learn search patterns from the users' interactions with search systems. These models underpin multiple user assisting applications that help search systems to be more interactive, user-friendly, and coherent. User assisting applications include query suggestion, the ranking of search results based on tasks, query reformulation analysis, e-commerce applications, retrieval of advertisement, query-term prediction, mapping of queries to search tasks, and so on. Consequently, we propose the following contributions: a neural model for learning to detect search task boundaries in query logs; a recurrent deep clustering architecture that simultaneously learns query representations through self-training, and cluster queries into groups of search tasks; Multilingual Graph-Based Clustering, an unsupervised, user-agnostic model for search task identification supporting queries in sixteen languages; and Language-agnostic Search Task Model, an unsupervised approach that simultaneously models user search intent and search tasks. Proposed models improve on existing methods for modeling user interactions, taking into account user privacy, realtime response times, and language accessibility. User privacy is a major concern in Ethics for intelligent systems, while fast responses are critical for search systems interacting with users in realtime, particularly in conversational search. At the same time, language accessibility is essential to assist users worldwide, who interact with search systems in many languages. The proposed contributions can benefit many user assisting applications, helping users to better solve their search tasks when accessing search systems to fulfill their information needs

    Modélisation des comportements de recherche basé sur les interactions des utilisateurs

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    Users of information systems normally divide tasks in a sequence of multiple steps to solve them. In particular, users divide search tasks into sequences of queries, interacting with search systems to carry out the information seeking process. User interactions are registered on search query logs, enabling the development of models to automatically learn search patterns from the users' interactions with search systems. These models underpin multiple user assisting applications that help search systems to be more interactive, user-friendly, and coherent. User assisting applications include query suggestion, the ranking of search results based on tasks, query reformulation analysis, e-commerce applications, retrieval of advertisement, query-term prediction, mapping of queries to search tasks, and so on. Consequently, we propose the following contributions: a neural model for learning to detect search task boundaries in query logs; a recurrent deep clustering architecture that simultaneously learns query representations through self-training, and cluster queries into groups of search tasks; Multilingual Graph-Based Clustering, an unsupervised, user-agnostic model for search task identification supporting queries in sixteen languages; and Language-agnostic Search Task Model, an unsupervised approach that simultaneously models user search intent and search tasks. Proposed models improve on existing methods for modeling user interactions, taking into account user privacy, realtime response times, and language accessibility. User privacy is a major concern in Ethics for intelligent systems, while fast responses are critical for search systems interacting with users in realtime, particularly in conversational search. At the same time, language accessibility is essential to assist users worldwide, who interact with search systems in many languages. The proposed contributions can benefit many user assisting applications, helping users to better solve their search tasks when accessing search systems to fulfill their information needs.Les utilisateurs de systĂšmes d'information divisent normalement les tĂąches en une sĂ©quence de plusieurs Ă©tapes pour les rĂ©soudre. En particulier, les utilisateurs divisent les tĂąches de recherche en sĂ©quences de requĂȘtes, en interagissant avec les systĂšmes de recherche pour mener Ă  bien le processus de recherche d'informations. Les interactions des utilisateurs sont enregistrĂ©es dans des journaux de requĂȘtes, ce qui permet de dĂ©velopper des modĂšles pour apprendre automatiquement les comportements de recherche Ă  partir des interactions des utilisateurs avec les systĂšmes de recherche. Ces modĂšles sont Ă  la base de multiples applications d'assistance aux utilisateurs qui aident les systĂšmes de recherche Ă  ĂȘtre plus interactifs, faciles Ă  utiliser, et cohĂ©rents. Par consĂ©quent, nous proposons les contributions suivantes : un modĂšle neuronale pour apprendre Ă  dĂ©tecter les limites des tĂąches de recherche dans les journaux de requĂȘte ; une architecture de regroupement profond rĂ©current qui apprend simultanĂ©ment les reprĂ©sentations de requĂȘte et regroupe les requĂȘtes en tĂąches de recherche ; un modĂšle non supervisĂ© et indĂ©pendant d'utilisateur pour l'identification des tĂąches de recherche prenant en charge les requĂȘtes dans seize langues ; et un modĂšle de tĂąche de recherche multilingue, une approche non supervisĂ©e qui modĂ©lise simultanĂ©ment l'intention de recherche de l'utilisateur et les tĂąches de recherche. Les modĂšles proposĂ©s amĂ©liorent les mĂ©thodes existantes de modĂ©lisation, en tenant compte de la confidentialitĂ© des utilisateurs, des rĂ©ponses en temps rĂ©el et de l'accessibilitĂ© linguistique. Le respect de la vie privĂ©e de l'utilisateur est une prĂ©occupation majeure, tandis que des rĂ©ponses rapides sont essentielles pour les systĂšmes de recherche qui interagissent avec les utilisateurs en temps rĂ©el, en particulier dans la recherche par conversation. Dans le mĂȘme temps, l'accessibilitĂ© linguistique est essentielle pour aider les utilisateurs du monde entier, qui interagissent avec les systĂšmes de recherche dans de nombreuses langues. Les contributions proposĂ©es peuvent bĂ©nĂ©ficier Ă  de nombreuses applications d'assistance aux utilisateurs, en aidant ces derniers Ă  mieux rĂ©soudre leurs tĂąches de recherche lorsqu'ils accĂšdent aux systĂšmes de recherche pour rĂ©pondre Ă  leurs besoins d'information

    Modélisation des comportements de recherche basé sur les interactions des utilisateurs

    No full text
    Users of information systems normally divide tasks in a sequence of multiple steps to solve them. In particular, users divide search tasks into sequences of queries, interacting with search systems to carry out the information seeking process. User interactions are registered on search query logs, enabling the development of models to automatically learn search patterns from the users' interactions with search systems. These models underpin multiple user assisting applications that help search systems to be more interactive, user-friendly, and coherent. User assisting applications include query suggestion, the ranking of search results based on tasks, query reformulation analysis, e-commerce applications, retrieval of advertisement, query-term prediction, mapping of queries to search tasks, and so on. Consequently, we propose the following contributions: a neural model for learning to detect search task boundaries in query logs; a recurrent deep clustering architecture that simultaneously learns query representations through self-training, and cluster queries into groups of search tasks; Multilingual Graph-Based Clustering, an unsupervised, user-agnostic model for search task identification supporting queries in sixteen languages; and Language-agnostic Search Task Model, an unsupervised approach that simultaneously models user search intent and search tasks. Proposed models improve on existing methods for modeling user interactions, taking into account user privacy, realtime response times, and language accessibility. User privacy is a major concern in Ethics for intelligent systems, while fast responses are critical for search systems interacting with users in realtime, particularly in conversational search. At the same time, language accessibility is essential to assist users worldwide, who interact with search systems in many languages. The proposed contributions can benefit many user assisting applications, helping users to better solve their search tasks when accessing search systems to fulfill their information needs.Les utilisateurs de systĂšmes d'information divisent normalement les tĂąches en une sĂ©quence de plusieurs Ă©tapes pour les rĂ©soudre. En particulier, les utilisateurs divisent les tĂąches de recherche en sĂ©quences de requĂȘtes, en interagissant avec les systĂšmes de recherche pour mener Ă  bien le processus de recherche d'informations. Les interactions des utilisateurs sont enregistrĂ©es dans des journaux de requĂȘtes, ce qui permet de dĂ©velopper des modĂšles pour apprendre automatiquement les comportements de recherche Ă  partir des interactions des utilisateurs avec les systĂšmes de recherche. Ces modĂšles sont Ă  la base de multiples applications d'assistance aux utilisateurs qui aident les systĂšmes de recherche Ă  ĂȘtre plus interactifs, faciles Ă  utiliser, et cohĂ©rents. Par consĂ©quent, nous proposons les contributions suivantes : un modĂšle neuronale pour apprendre Ă  dĂ©tecter les limites des tĂąches de recherche dans les journaux de requĂȘte ; une architecture de regroupement profond rĂ©current qui apprend simultanĂ©ment les reprĂ©sentations de requĂȘte et regroupe les requĂȘtes en tĂąches de recherche ; un modĂšle non supervisĂ© et indĂ©pendant d'utilisateur pour l'identification des tĂąches de recherche prenant en charge les requĂȘtes dans seize langues ; et un modĂšle de tĂąche de recherche multilingue, une approche non supervisĂ©e qui modĂ©lise simultanĂ©ment l'intention de recherche de l'utilisateur et les tĂąches de recherche. Les modĂšles proposĂ©s amĂ©liorent les mĂ©thodes existantes de modĂ©lisation, en tenant compte de la confidentialitĂ© des utilisateurs, des rĂ©ponses en temps rĂ©el et de l'accessibilitĂ© linguistique. Le respect de la vie privĂ©e de l'utilisateur est une prĂ©occupation majeure, tandis que des rĂ©ponses rapides sont essentielles pour les systĂšmes de recherche qui interagissent avec les utilisateurs en temps rĂ©el, en particulier dans la recherche par conversation. Dans le mĂȘme temps, l'accessibilitĂ© linguistique est essentielle pour aider les utilisateurs du monde entier, qui interagissent avec les systĂšmes de recherche dans de nombreuses langues. Les contributions proposĂ©es peuvent bĂ©nĂ©ficier Ă  de nombreuses applications d'assistance aux utilisateurs, en aidant ces derniers Ă  mieux rĂ©soudre leurs tĂąches de recherche lorsqu'ils accĂšdent aux systĂšmes de recherche pour rĂ©pondre Ă  leurs besoins d'information

    Segmenting Search Query Logs by Learning to Detect Search Task Boundaries

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    International audienceTo fulfill their information needs, users submit sets of related queries to available search engines. Query logs record users' activities along with timestamps and additional search-related information. The analysis of those chronological query logs enables the modeling of search tasks from user interactions. Previous research works rely on clicked URLs and surrounding queries to determine if adjacent queries are part of the same search tasks to segment the query logs properly. However, waiting for clicked URLs or future adjacent queries could render the use of these methods unfeasible in user supporting applications that require model results on the fly. Therefore, we propose a model for sequential search log segmentation. The proposed model uses only query pairs and their time span, generating results suited for on the fly user supporting applications, with improved accuracy over existing search segmentation approaches. We also show the advantages of fine-tuning the proposed model for adjusting the architecture to a small annotated collection

    Extracting Search Tasks from Query Logs Using a Recurrent Deep Clustering Architecture

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    International audienceUsers fulfill their information needs by expressing them using search queries and running the queries in available search engines. The mining of query logs from search engines enables the automatic extraction of search tasks by clustering related queries into groups representing search tasks. The extraction of search tasks is crucial for multiple user supporting applications like query recommendation, query term prediction, and results ranking depending on search tasks. Most existing search task extraction methods use graph-based or nonparametric models, which grow as the query log size increases. Deep clustering methods offer a parametric alternative, but most deep clustering architectures fail to exploit recurrent neural networks for learning text data representations. We propose a recurrent deep clustering model for extracting search tasks from query logs. The proposed architecture leverages self-training and dual recurrent encoders for learning suitable latent representations of user queries, outperforming previous deep clustering methods. It is also a parametric approach that offers the possibility of having a fixed-sized architecture for analyzing increasingly large search query logs
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