Applications are invited for a Postdoctoral Research Associate post in Cardiff 
University’s School of Computer Science & Informatics.

Keywords: vector space semantics, deep learning, interpretable machine 
learning, symbolic models

Overview: This is a full-time, fixed-term post for 30 months, starting on 1 May 
2017 or as soon as possible thereafter. The successful candidate will be 
dedicated to finding creative solutions and have a genuine curiosity and 
enthusiasm to undertake world-class research in the field of Machine Learning / 
Artificial Intelligence. Specifically, the aim of this post will be to develop 
novel methods for learning interpretable/symbolic models from diverse sources 
of information, including knowledge graphs, vector space models and natural 
language text. These models will then be used as background theories in 
applications such as recognising textual entailment, automated knowledge base 
completion, or zero-shot learning. You will work closely with Steven 
Schockaert. You will possess or be near the completion of a PhD in Computer 
Science or a related area, or have relevant industrial experience. This 
research will be part of the FLEXILOG project, which is funded by the European 
Research Council (ERC)

Closing date for applications: 2 March 2017

Essential criteria:
1.   Postgraduate degree at PhD level, or near to completion of a PhD in a 
related subject area or relevant industrial experience
Knowledge, Skills and Experience.
2.   An established expertise and proven portfolio of research and/or relevant 
industrial experience within at least two of the following research fields: 
Machine Learning, Knowledge Representation, Natural Language Processing.
3.   A strong background in statistics and linear algebra.
4.   Excellent programming skills.
5.   Knowledge of current status of research in specialist field.
6.   Proven ability to publish in relevant journals (e.g. Artificial 
Intelligence, Journal of Artificial Intelligence Research, Journal of Machine 
Learning Research, Machine Learning) or top-tier conferences (e.g. IJCAI, AAAI, 
ECAI, NIPS, ICML, KDD, ACL, EMNLP).
7.   Ability to understand and apply for competitive research funding.
8.   Proven ability in effective and persuasive communication.
9.   Ability to supervise the work of others to focus team efforts and motivate 
individuals.
10.  Proven ability to demonstrate creativity, innovation and team-working 
within work.

Background about the university:
Cardiff is a strong and vibrant capital city with good transportation links and 
an excellent range of housing available. Various surveys have ranked it as one 
of the most liveable cities in Europe. Cardiff University is a member of the 
Russell Group of research universities, and was ranked 5th in the UK based on 
the quality of research in the 2014 Research Evaluation Framework. The 
university has a successful School of Computer Science & Informatics with an 
international reputation for its teaching and research activities. The school 
has a strong research track record recognised for its outstanding impact in 
terms of reach and significance, with 79% of its outputs deemed world-leading 
or internationally excellent in the 2014 Research Excellence Framework.

Background about the project:
Vector space embeddings have become a popular representation framework in many 
areas of natural language processing and knowledge representation. In the 
context of knowledge base completion, for example, their ability to capture 
important statistical dependencies in relational data has proven remarkably 
powerful. These vector space models, however, are typically not interpretable, 
which can be problematic for at least two reasons. First, in applications it is 
often important that we can provide an intuitive justification to the end user 
as to why a given statement is believed, and such justifications are moreover 
invaluable for debugging or assessing the performance of a system. Second, the 
black box nature of these representations makes it difficult to integrate them 
with other sources of information, such as statements derived from natural 
language, or from structured domain theories. Symbolic representations, on the 
other hand, are easy to interpret, but classical inference is not sufficiently 
robust (e.g. in case of inconsistency) and too inflexible (e.g. in case of 
missing knowledge) for most applications.

The overall aim of the FLEXILOG project is to develop novel forms of reasoning 
that combine the transparency of logical methods with the flexibility and 
robustness of vector space representations. For example, symbolic inference can 
be augmented with inductive reasoning patterns (based on cognitive models of 
human commonsense reasoning), by relying on fine-grained semantic relationships 
that are derived from vector space representations. Conversely, logical 
formulas can be interpreted as spatial constraints on vector space 
representations. This duality between logical theories and vector space 
representations opens up various new possibilities for learning interpretable 
domain theories from data, which will enable new ways of tackling applications 
such as recognising textual entailment, automated knowledge base completion, or 
zero-shot learning.

More information:
For more details about the project and instructions on how to apply, please go 
to www.cardiff.ac.uk/jobs<http://www.cardiff.ac.uk/jobs> and search for job 
5545BR. Please note the requirement to evidence all essential criteria in the 
supporting statement.
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