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Dive into the research topics where Besmira Nushi is active.

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Featured researches published by Besmira Nushi.


very large data bases | 2012

Uncertain time-series similarity: return to the basics

Michele Dallachiesa; Besmira Nushi; Katsiaryna Mirylenka; Themis Palpanas

In the last years there has been a considerable increase in the availability of continuous sensor measurements in a wide range of application domains, such as Location-Based Services (LBS), medical monitoring systems, manufacturing plants and engineering facilities to ensure efficiency, product quality and safety, hydrologic and geologic observing systems, pollution management, and others. Due to the inherent imprecision of sensor observations, many investigations have recently turned into querying, mining and storing uncertain data. Uncertainty can also be due to data aggregation, privacy-preserving transforms, and error-prone mining algorithms. In this study, we survey the techniques that have been proposed specifically for modeling and processing uncertain time series, an important model for temporal data. We provide an analytical evaluation of the alternatives that have been proposed in the literature, highlighting the advantages and disadvantages of each approach, and further compare these alternatives with two additional techniques that were carefully studied before. We conduct an extensive experimental evaluation with 17 real datasets, and discuss some surprising results, which suggest that a fruitful research direction is to take into account the temporal correlations in the time series. Based on our evaluations, we also provide guidelines useful for the practitioners in the field.


Quest | 2011

Similarity matching for uncertain time series: analytical and experimental comparison

Michele Dallachiesa; Besmira Nushi; Katsiaryna Mirylenka; Themis Palpanas

In the last years there has been a considerable increase in the availability of continuous sensor measurements in a wide range of application domains, such as Location-Based Services (LBS), medical monitoring systems, manufacturing plants and engineering facilities to ensure efficiency, product quality and safety, hydrologic and geologic observing systems, pollution management, and others. Due to the inherent imprecision of sensor observations, many investigations have recently turned into querying, mining and storing uncertain data. Uncertainty can also be due to data aggregation, privacy-preserving transforms, and error-prone mining algorithms. In this study, we survey the techniques that have been proposed specifically for modeling and processing uncertain time series, an important model for temporal data. We provide both an analytical evaluation of the alternatives that have been proposed in the literature, highlighting the advantages and disadvantages of each approach. We additionally conduct an extensive experimental evaluation with 17 real datasets, and discuss some surprising results. Based on our evaluations, we also provide guidelines useful for practitioners in the field.


international conference on web engineering | 2015

CrowdSTAR: A Social Task Routing Framework for Online Communities

Besmira Nushi; Omar Alonso; Martin Hentschel; Vasileios Kandylas

The online communities available on the Web have shown to be significantly interactive and capable of collectively solving difficult tasks. Nevertheless, it is still a challenge to decide how a task should be dispatched through the network due to the high diversity of the communities and the dynamically changing expertise and social availability of their members. We introduce CrowdSTAR, a framework designed to route tasks across and within online crowds. CrowdSTAR indexes the topic-specific expertise and social features of the crowd contributors and then uses a routing algorithm, which suggests the best sources to ask based on the knowledge vs. availability trade-offs. We experimented with the proposed framework for question and answering scenarios by using two popular social networks as crowd candidates: Twitter and Quora.


national conference on artificial intelligence | 2015

Crowd Access Path Optimization: Diversity Matters

Besmira Nushi; Adish Singla; Anja Gruenheid; Erfan Zamanian; Andreas Krause; Donald Kossmann


arXiv: Databases | 2015

Fault-Tolerant Entity Resolution with the Crowd.

Anja Gruenheid; Besmira Nushi; Tim Kraska; Wolfgang Gatterbauer; Donald Kossmann


national conference on artificial intelligence | 2016

On Human Intellect and Machine Failures: Troubleshooting Integrative Machine Learning Systems.

Besmira Nushi; Ece Kamar; Eric Horvitz; Donald Kossmann


national conference on artificial intelligence | 2016

Learning and Feature Selection under Budget Constraints in Crowdsourcing

Besmira Nushi; Adish Singla; Andreas Krause; Donald Kossmann


arXiv: Social and Information Networks | 2018

Analysis of Strategy and Spread of Russia-sponsored Content in the US in 2017.

Alexander Spangher; Gireeja Ranade; Besmira Nushi; Adam Fourney; Eric Horvitz


arXiv: Learning | 2018

Towards Accountable AI: Hybrid Human-Machine Analyses for Characterizing System Failure.

Besmira Nushi; Ece Kamar; Eric Horvitz


Archive | 2017

Quality Control and Optimization for Hybrid Crowd-Machine Learning Systems

Besmira Nushi

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Themis Palpanas

Paris Descartes University

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