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Gartner Survey Finds 70 Percent of AI Projects in Digital Commerce Are Successful

#artificialintelligence

Use of artificial intelligence (AI) in digital commerce is generally considered a success, according to a survey by Gartner, Inc. About 70 percent of digital commerce organizations surveyed report that their AI projects are very or extremely successful. Gartner conducted a survey* of 307 digital commerce organizations that are currently using or piloting AI to understand the adoption, value, success and challenges of AI in digital commerce. Respondents included organizations in the U.S., Canada, Brazil, France, Germany, the U.K., Australia, New Zealand, India and China. Three-quarters of respondents said they are seeing double-digit improvements in the outcomes they measure.


8 Talks You Missed During The 2018 Big Data Week London

#artificialintelligence

Now on its 7th year, the Big Data Week returned to London last 5 October for a one-day conference gathering data scientists and experts, and data businesses across the globe. This year the event focused on the latest innovations on Advanced Analytics, data visualisation, AI, and IoT projects. Data experts from top data and tech companies such as VMWare, TUI Group, Bigstep, Satalia, GRSC Group, Data Reply, Experian and 3n Strategy, among many others, discussed topics ranging from handling billions of edges in a graph database to artificial intelligence for marketing, and more. Scott Stevenson, #DataScientist at @ASIDataScience, is explaining how to use #AI for realistic speech #generation, covering fake news & the issues within current media, developments in #ML on #SpeechGeneration, demos, consequences & risks of this #technology. The topic stems from the idea and issue of technology producing fake news.


Building blocks of the human brain

Science

The human cerebral cortex includes billions of neurons organized into six sheetlike layers. More than a century ago, Santiago Ramรณn y Cajal appreciated the astonishing diversity of cell types in the brain, but even today, it is unclear how the different neuronal cell types are assembled and distributed across the distinct anatomical areas of the cortex to support its diverse functions. We know that excitatory neurons of the cortex are born from a uniform population of radial glia. During development, radial glia line the fluid-filled ventricles and extend long fibers that connect with the outer pial surface. Newborn neurons migrate along radial glia fibers to the outer layers of the tissue, where they form the cerebral cortex.


'Global Enterprises Adopting IBM Cloud Private' - SMEStreet: Knowledge & Networking for Growth 'Global Enterprises Adopting IBM Cloud Private'

#artificialintelligence

IBM (NYSE: IBM) has announced that in less than 12 months since the release of IBM Cloud Private โ€“ an open source technology that brings cloud capabilities to organizations running on-premises IT systems โ€“ hundreds of leading enterprises worldwide have turned to the platform to help modernize their operations. They include New Zealand Police, China's Fuyao Group, Japan's Aflac Insurance, Turkey's credit bureau Kredi Kayฤฑt Bรผrosu and Brazil's Fidelity National Information Services. Building on this momentum, IBM is announcing a slate of new advanced features for the on-premises private cloud platform, including the integration of powerful AI capabilities such as IBM Watson Assistant and IBM Watson Speech-to-Text, as well as support for additional public clouds, including the IBM Cloud. The updates provide clients with even more choice and flexibility for their IT journeys, and, for the first time, bring the power of IBM's Watson AI behind the company firewall. "The cloud has evolved in a very short time from being a way to cut costs to a platform for business transformation and innovation," said Robin Hernandez, Director, IBM Private Cloud Offering Management.


Non-linear process convolutions for multi-output Gaussian processes

arXiv.org Machine Learning

The paper introduces a non-linear version of the process convolution formalism for building covariance functions for multi-output Gaussian processes. The non-linearity is introduced via Volterra series, one series per each output. We provide closed-form expressions for the mean function and the covariance function of the approximated Gaussian process at the output of the Volterra series. The mean function and covariance function for the joint Gaussian process are derived using formulae for the product moments of Gaussian variables. We compare the performance of the non-linear model against the classical process convolution approach in one synthetic dataset and two real datasets.


Is there Gender bias and stereotype in Portuguese Word Embeddings?

arXiv.org Artificial Intelligence

In this work, we propose an analysis of the presence of gender bias associated with professions in Portuguese word embeddings. The objective of this work is to study gender implications related to stereotyped professions for women and men in the context of the Portuguese language.


Mapping Bat Communications with Artificial Intelligence Could be Key to Conversation - Pacific Standard

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South American bats speak dialects different from those of their North American counterparts. In response, a group of scientists has developed the first artificial intelligence (AI) algorithm for acoustic identification of bat species in Uruguay. It is available online, under a free license and in open-source code. Moreover, says team leader biologist Germรกn Botto of the Universidad de la Repรบblica de Uruguay, new recordings collected by scientists using the algorithm in wind farm studies will enhance the system's proficiency in identifying species. "Windmill farms are a menace for birdsโ€ฆand bats," Botto told Mongabay.


Meta-Learning: A Survey

arXiv.org Machine Learning

Meta-learning, or learning to learn, is the science of systematically observing how different machine learning approaches perform on a wide range of learning tasks, and then learning from this experience, or meta-data, to learn new tasks much faster than otherwise possible. Not only does this dramatically speed up and improve the design of machine learning pipelines or neural architectures, it also allows us to replace hand-engineered algorithms with novel approaches learned in a data-driven way. In this chapter, we provide an overview of the state of the art in this fascinating and continuously evolving field.


Neural Networks Models for Analyzing Magic: the Gathering Cards

arXiv.org Machine Learning

Historically, games of all kinds have often been the subject of study in scientific works of Computer Science, including the field of machine learning. By using machine learning techniques and applying them to a game with defined rules or a structured dataset, it's possible to learn and improve on the already existing techniques and methods to tackle new challenges and solve problems that are out of the ordinary. The already existing work on card games tends to focus on gameplay and card mechanics. This work aims to apply neural networks models, including Convolutional Neural Networks and Recurrent Neural Networks, in order to analyze Magic: the Gathering cards, both in terms of card text and illustrations; the card images and texts are used to train the networks in order to be able to classify them into multiple categories. The ultimate goal was to develop a methodology that could generate card text matching it to an input image, which was attained by relating the prediction values of the images and generated text across the different categories.


Personality facets recognition from text

arXiv.org Artificial Intelligence

Fundamental Big Five personality traits and their facets are known to correlate with a wide range of linguistic features and, accordingly, the recognition of personality traits from text is a well-established NLP task. Obtaining facets information may however require extensive personality inventories and, as a result, existing computational models are usually limited to the recognition of the five main personality categories. Based on these observations, this paper investigates the recognition of a number of personality facets from a Brazilian Facebook corpus obtained (at low cost) from a shorter personality inventory. In doing so, we compare a number of personality facet recognition models, and present preliminary reference results for further studies in the field.