{"id":63,"date":"2016-02-23T17:25:51","date_gmt":"2016-02-23T17:25:51","guid":{"rendered":"http:\/\/summerschool2016.eswc-conferences.org\/?page_id=63"},"modified":"2016-08-18T11:33:52","modified_gmt":"2016-08-18T10:33:52","slug":"programme","status":"publish","type":"page","link":"http:\/\/summerschool2016.eswc-conferences.org\/about\/programme\/","title":{"rendered":"Programme"},"content":{"rendered":"
Random variables & distributions, statistical studies, descriptive statistics, dependent & independent events, regression and inferential statistics.<\/p>\n<\/div>\n
Language processing pipelines for knowledge technologies<\/strong> Knowledge Representation on the Web using Prototypes: Syntax, Semantics and Pragmatics<\/strong> Data and Algorithmic Bias in the Web<\/strong> Data Science for Social Impact: Case Studies, Challenges, and Opportunities<\/strong>
The Natural Language Processing is usually considered a (pre)processing step in text-based knowledge technologies. To the expected audience of PhD students the tasks, methods and techniques used in composing the full language processing pipelines will be presented. These pipelines cover not only language processing at the basic levels (sentence splitting, tokenization, POS\/MSD-tagging), but also higher levels (NERC, syntactic parsing, semantic parsing, sematic role labelling, etc.). The lecture will cover not only theoretical concepts needed to understand these methods and tools, but also a practical demonstration of pipelines developed in some EU-funded projects<\/small><\/p>\n<\/div>\n
Knowledge Representation (KR) on the Web has been a topic for Semantic Web research for a while and is increasingly relevant for practitioners – e.g., in the Open Data Movements or for Research Data Management. The standard for KR on the Web has been OWL for 10 years., in which numerous experiences has been gained. These experiences has prompted us to propose an approach aiming to augment and complement OWL based on prototypical objects. Prototypes have been explored in early Frame Representation Systems, but have been largely neglected in the last decades. In my talk I present a syntax and a formal semantics for prototype representation systems, proving that also Prototypes Systems can provide a formal underpinning for Knowledge Representation. Initial performance results will also be presented and are encouraging.
\nFinally I will conclude with prospects and open research challenges.<\/small><\/p>\n<\/div>\n<\/div>\n
The Web is the largest public big data repository that humankind has created. In this overwhelming data ocean, we need to be aware of the quality and, in particular, of the biases that exist in this data. In the Web, biases also come from redundancy and spam, as well as from algorithms that we design to improve the user experience. This problem is further exacerbated by biases that are added by these algorithms, specially in the context of search and recommendation systems. They include selection and presentation bias in many forms, interaction bias, social bias, etc. We give several examples and their relation to sparsity and privacy, stressing the importance of the user context to avoid these biases.<\/small><\/p>\n<\/div>\n
Can Data Science help reduce police violence and misconduct? Can it help prevent children from getting lead poisoning? Can it help cities better target limited resources to improve lives of citizens? We’re all aware of the data science hype right now but turning this hype into any social impact takes effort. In this talk, I’ll discuss lessons learned while working on dozens of projects over the past few years with non-profits and governments on high-impact social challenges. These lessons span from challenges these organizations face when trying to use data science, to understanding how to effectively train and build cross-disciplinary teams to do practical data science, as well as what machine learning and social science research challenges need to be tackled, and what tools and techniques need to be developed in order to have a social and policy impact with machine learning.<\/small><\/p>\n<\/div>\n