IEEE SSCI 2020 will run as a virtual conference.
The latest advances in Machine Learning are reaching critical areas such as medicine,
criminal justice systems, financial markets and many other real applications. From a
mathematical point of view, the search of the model focuses on the minimization of a cost
function or the maximization of a likelihood function. Thus, the performance of the model is
measured almost exclusively on the results we can get according to some rightly chosen
metrics. This tendency has led to more and more sophisticated algorithms to the cost of
explainability (Interpretability). Having an accurate model is good, but explanations lead
to better products. There is an increasing concern about the acceptance of the computation
intelligent learning models, where the explainability is the key measures for evaluating
models.
In recent years, the advancements in computational intelligence have allowed
researchers to tackle data driven problems with explainability and integrate efficient
optimization algorithms for solving them. Due to the long-term memory, nonlocality, and weak
singularity fractional differential operator, there is an increasing applications on
fractional calculus based computation intelligent models. It is also an interesting research
area to pay more attention on the interpretability aspect. From Explainable Data Analytics
concern, this symposium aims to highlight the latest results from world leading research
labs, academia and industry in the fields of Computational Intelligence, whose issues
include corresponding efficient neural network methods, evolutionary algorithms and
Neuro-fuzzy optimization techniques. In order to encourage research interactions, we welcome
submissions describing innovative operations research methods that are able to provide
state-of-the-art solutions to the above mentioned issues as well. Researches incorporating
real-world applications are also highly encouraged.
The symposium will cover all the issues, researches and developments of the state-of-the-art EDACI-based learning models in solving various problems. CI application areas include, but are not limited to:
Canberra, Australia
1-4 December 2020
ieeessci2020 at gmail . com