learning-by-watching   7

[1108.5508] A Pattern Measure
"In this paper we propose numerical measures for evaluating the aesthetic interest of simple patterns. The patterns consist of elements (symbols, pixels, etc.) in regular square arrays. The measures depend on two characteristics of the patterns: the number of different types of element, and the number of symmetries in their arrangement. We define two complementary composite measures L and C for the degree of pattern in a design, and compute them here for 2x2 and 6x6 arrays. The results distinguish simple from high-variation cases. We suspect that the measure L corresponds to the degree that human beings intuitively feel a design to be "interesting", so this model would aid in quantifying the visual connection of two- dimensional designs with viewers. The other composite measure C based on these numerical properties characterizes the extent of randomness of an array. Combining symbol variety with symmetry calculations allows us to employ hierarchical scaling to count the relative impact of different levels of scale. By identifying substructures we can distinguish between organized patterns and disorganized complexity. The measures described here are related to verbal descriptors derived from work by psychologists on responses to visual environments."
cognition  aesthetics  experimental-psychology  nudge-targets  learning-by-watching 
october 2011 by Vaguery
[1008.2489] Emergence of collective memories
"We understand the dynamics of the world around us as by associating pairs of events, where one event has some influence on the other. These pairs of events can be aggregated into a web of memories representing our understanding of an episode of history. The events and the associations between them need not be directly experienced-they can also be acquired by communication. In this paper we take a network approach to study the dynamics of memories of history. First we investigate the network structure of a data set consisting of reported events by several individuals and how associations connect them. We focus our measurement on degree distributions, degree correlations, cycles (which represent inconsistencies as they would break the time ordering) and community structure.…"
network-theory  collective-intelligence  agent-based  complexology  learning-by-watching 
august 2010 by Vaguery
Multi-task learning - Wikipedia, the free encyclopedia
"Multi-task learning is an approach to machine learning, that learns a problem together with other related problems at the same time, using a shared representation. This often leads to a better model for the main task, because it allows the learner to use the commonality among the tasks. Therefore, multi-task learning is a kind of inductive transfer."
I-guess  machine-learning  learning-by-doing  learning-by-watching  nudge-targets 
may 2010 by Vaguery
[1005.0919] Attribute Weighting with Adaptive NBTree for Reducing False Positives in Intrusion Detection
"… Due to the tremendous growth of network-based services, intrusion detection has emerged as an important technique for network security. Recently data mining algorithms are applied on network-based traffic data and host-based program behaviors to detect intrusions or misuse patterns, but there exist some issues in current intrusion detection algorithms such as unbalanced detection rates, large numbers of false positives, and redundant attributes that will lead to the complexity of detection model and degradation of detection accuracy. The purpose of this study is to identify important input attributes for building an intrusion detection system (IDS) that is computationally efficient and effective.…"
nudge-targets  system-administration  security  algorithms  machine-learning  learning-from-data  learning-by-watching  statistics 
may 2010 by Vaguery
Seth's Blog: Secrets of the biggest selling launch ever
"Are their tactics are reserved for giant consumer fads? I don't think so. In fact, they work even better for smaller gigs and more focused markets."
marketing  business-culture  advice  learning-by-watching 
april 2010 by Vaguery
Economist's View: "How Have Quantitative Financial Models Been Used and Misused?"
"There are important uses for financial products, even complicated ones, so I don't want to impugn innovation generally, but I also don't want to adopt the position that it was all useful - it clearly wasn't and stronger regulatory oversight is needed. As for the defense of financial models and innovation described above, the statement that innovation generally is the source of economic growth, therefore financial innovation must also be good, isn't much help. Similarly, if saying "models benefit many fields, such as airline safety, and not only financial markets" is the best defense of risk models available, that's telling."
modeling  management-failure  learning-from-data  learning-by-watching  map-is-not-the-territory  financial-crisis  finger-pointing  agility  inagility 
december 2009 by Vaguery

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