Unlabel
Title | Unlabel PDF eBook |
Author | Marc Ecko |
Publisher | Simon and Schuster |
Pages | 304 |
Release | 2015-05-05 |
Genre | Biography & Autobiography |
ISBN | 1451685319 |
"One of the most provocative entrepreneurs of our time, who started Eckō Unltd out of his parents' garage and turned it into a media empire, Marc Eckō reveals his formula for building an authentic brand or business. Marc Eckō began his career by spray-painting t-shirts in the garage of his childhood home in suburban New Jersey. A graffiti artist with no connections and no fashion pedigree, he left the safety net of pharmacy school to start his own company. Armed with only hustle, sweat equity, and creativity, he flipped a $5,000 bag of cash into a global corporation now worth $500 million. Unlabel is a success story, but it's one that shares the bruises, scabs, and gut-wrenching mistakes that every entrepreneur must overcome to succeed. Through his personal prescription for success--the Authenticity Formula--Eckō recounts his many innovations and misadventures in his journey from misfit kid to the CEO. It wasn't a meteoric rise; in fact, it was a rollercoaster that dipped to the edge of bankruptcy and even to national notoriety, but this is an underdog story we can learn from: Ecko's doubling down on the core principles of the brand and his formula for action over talk are all lessons for today's entrepreneurs. Ecko offers a brash message with his inspirational story: embrace pain, take risks, and be yourself. Unlabel demonstrates that, like or not, you are a brand and it's up you to take control of it and create something authentic. Unlabel is a groundbreaking guide to channeling your creativity, finding the courage to defy convention, and summoning the confidence to act and be competitive in any environment"--
Positive Unlabeled Learning
Title | Positive Unlabeled Learning PDF eBook |
Author | Kristen Jaskie |
Publisher | Morgan & Claypool Publishers |
Pages | 152 |
Release | 2022-04-20 |
Genre | Computers |
ISBN | 1636393098 |
Machine learning and artificial intelligence (AI) are powerful tools that create predictive models, extract information, and help make complex decisions. They do this by examining an enormous quantity of labeled training data to find patterns too complex for human observation. However, in many real-world applications, well-labeled data can be difficult, expensive, or even impossible to obtain. In some cases, such as when identifying rare objects like new archeological sites or secret enemy military facilities in satellite images, acquiring labels could require months of trained human observers at incredible expense. Other times, as when attempting to predict disease infection during a pandemic such as COVID-19, reliable true labels may be nearly impossible to obtain early on due to lack of testing equipment or other factors. In that scenario, identifying even a small amount of truly negative data may be impossible due to the high false negative rate of available tests. In such problems, it is possible to label a small subset of data as belonging to the class of interest though it is impractical to manually label all data not of interest. We are left with a small set of positive labeled data and a large set of unknown and unlabeled data. Readers will explore this Positive and Unlabeled learning (PU learning) problem in depth. The book rigorously defines the PU learning problem, discusses several common assumptions that are frequently made about the problem and their implications, and considers how to evaluate solutions for this problem before describing several of the most popular algorithms to solve this problem. It explores several uses for PU learning including applications in biological/medical, business, security, and signal processing. This book also provides high-level summaries of several related learning problems such as one-class classification, anomaly detection, and noisy learning and their relation to PU learning.
International Symposium on Labeled and Unlabeled Antibody in Cancer Diagnosis and Therapy
Title | International Symposium on Labeled and Unlabeled Antibody in Cancer Diagnosis and Therapy PDF eBook |
Author | |
Publisher | |
Pages | 196 |
Release | 1987 |
Genre | Cancer |
ISBN |
Formaldehyde Release from Labeled and Unlabeled Cross-linked Cotton and Cotton-polyester Fabrics
Title | Formaldehyde Release from Labeled and Unlabeled Cross-linked Cotton and Cotton-polyester Fabrics PDF eBook |
Author | |
Publisher | |
Pages | 26 |
Release | 1984 |
Genre | Cotton fabrics |
ISBN |
Inducing Event Schemas and Their Participants from Unlabeled Text
Title | Inducing Event Schemas and Their Participants from Unlabeled Text PDF eBook |
Author | Nathanael William Chambers |
Publisher | Stanford University |
Pages | 159 |
Release | 2011 |
Genre | |
ISBN |
The majority of information on the Internet is expressed in written text. Understanding and extracting this information is crucial to building intelligent systems that can organize this knowledge, but most algorithms focus on learning atomic facts and relations. For instance, we can reliably extract facts like "Stanford is a University" and "Professors teach Science" by observing redundant word patterns across a corpus. However, these facts do not capture richer knowledge like the way detonating a bomb is related to destroying a building, or that the perpetrator who was convicted must have been arrested. A structured model of these events and entities is needed to understand language across many genres, including news, blogs, and even social media. This dissertation describes a new approach to knowledge acquisition and extraction that learns rich structures of events (e.g., plant, detonate, destroy) and participants (e.g., suspect, target, victim) over a large corpus of news articles, beginning from scratch and without human involvement. As opposed to early event models in Natural Language Processing (NLP) such as scripts and frames, modern statistical approaches and advances in NLP now enable new representations and large-scale learning over many domains. This dissertation begins by describing a new model of events and entities called Narrative Event Schemas. A Narrative Event Schema is a collection of events that occur together in the real world, linked by the typical entities involved. I describe the representation itself, followed by a statistical learning algorithm that observes chains of entities repeatedly connecting the same sets of events within documents. The learning process extracts thousands of verbs within schemas from 14 years of newspaper data. I present novel contributions in the field of temporal ordering to build classifiers that order the events and infer likely schema orderings. I then present several new evaluations for the extracted knowledge. Finally, I apply Narrative Event Schemas to the field of Information Extraction, learning templates of events with sets of semantic roles. Most Information Extraction approaches assume foreknowledge of the domain's templates, but I instead start from scratch and learn schemas as templates, and then extract the entities from text as in a standard extraction task. My algorithm is the first to learn templates without human guidance, and its results approach those of supervised algorithms.
Unsupervised Learning Models for Unlabeled Genomic, Transcriptomic & Proteomic Data
Title | Unsupervised Learning Models for Unlabeled Genomic, Transcriptomic & Proteomic Data PDF eBook |
Author | Jianing Xi |
Publisher | Frontiers Media SA |
Pages | 109 |
Release | 2022-01-05 |
Genre | Science |
ISBN | 2889719677 |
Unlabeled
Title | Unlabeled PDF eBook |
Author | Michelle Graham |
Publisher | |
Pages | 151 |
Release | 2019-04-05 |
Genre | |
ISBN | 9781091374836 |
"The human mind. It's where we live. We don't imagine it getting sick. Heart, lungs, skin, bones, liver, kidneys. These are parts of us, too. Our parts can get sick, and they can get better, with the right care." -Michelle Graham- "This is a miraculous memoir of a young woman's struggle with mental health. It is raw, touching, and most of all courageous and inspiring. A must read for anyone in the mental health field." - Margie O'Connor, LMSW, ACSW"As you read these words, know this is my past, but today I am well, and that should not be shamed. Insisting a person can't fully recover is destructive. I hope to inspire those who've dealt with mental health issues to find their voice, because many of us are silenced, and our secrets can cause unnecessary pain. We are all products of our environment and experiences, and this is my personal journey of mental illness to recovery to display hope and an understanding of what can happen to the human brain, when the heart and mind fall unaligned. I want to provide a pathway to wellness, and help make the mental health system more cost-effective, and ensure the health and safety of both patients and mental health care workers."Connect with Michelle on Instagram at: @BeyondPsychosisFacebook: http: //www.facebook.com/unlabeledreflectionsE-mail: [email protected]