45 research outputs found
EFFICIENCY AND PRODUCTIVITY GROWTH IN INDIAN BANKING
This paper attempts to examine technical efficiency and productivity performance of Indian scheduled commercial banks, for the period 1979-2008. We model a multiple output/multiple input technology production frontier using semiparametric estimation methods. The endogenity of multiple outputs is addressed by semi parametric estimates in part by introducing multivariate kernel estimators for the joint distribution of the multiple outputs and correlated random effects. Output is measured as the rupee value of total loans and total investments at the end of the year. The estimates provide robust inferences of the productivity and efficiency gains due to economic reforms.Banking, Frontier efficiency, Productivity
The Phase Space Dynamics of Neuronal Systems: I, Model and Experiments.
We investigate the phase space dynamics of local systems of biological neurons in order to deduce the salient computational characteristics of such systems. In this rst report, we develop an abstract physical system that models local systems of spiking biological neurons. The system is based on a limited set of realistic assumptions and in consequence accommodates a wide range of neuronal models. Simulations of the model demonstrate that the dynamical behavior of the system is akin to that observed in neurophysiological experiments. In an upcoming report, we shall demonstrate that the dynamics of the model exhibits the classic characteristics of a chaotic system, namely, contraction, expansion, and folding. We view this research as a rst step towards understanding the basis for symbolic computation in the brain.Technical report DCS-TR-34
Initializing neural networks using decision trees
Existing approaches to the inductive learning problem include Symbolic and Connectionist algorithms. While the Symbolic approach is generally found to run significantly faster during learning, the Connectionist algorithms are often more accurate at classifying novel examples in the presence of noisy data. This paper presents a technique that determines the topology and initial weightsof a neural network using a decision tree, thus combining both approaches. Experimental results on benchmark real-world datasets indicate that this technique outperforms the above mentioned approaches both in efficiency and accuracy.Technical report lcsr-tr-22
On The Phase Space Dynamics of Neuronal Systems: Model, Experiments, and Analysis.
We investigate the phase space dynamics of local systems of biological neurons in order to deduce the salient computational characteristics of such systems. We develop an abstract physical system that models local systems of spiking biological neurons. The system is based on a limited set of realistic assumptions and in consequence accommodates a wide range of neuronal models. An appropriate instantiation of the system is used to simulate the dynamics of a typical column in the neocortex. The results of the simulations demonstrate that the dynamical behavior of the system is akin to that observed in neurophysiological experiments. Analysis of local properties of flows in the phase space of the system reveals the classic characteristics of a chaotic system, namely, contraction, expansion, and folding. The criterion for the dynamics of the system to be sensitive to initial conditions is identified. Based on physiological parameters it is deduced that (a) periodic orbits in the region of the phase space corresponding to "normal operational conditions" are almost surely (with probability=1) unstable, (b) periodic orbits in the region of the phase space corresponding to "seizure like conditions" are almost surely stable, and (c) trajectories in the region of the phase space corresponding to "normal operational conditions" are almost surely sensitive to initial conditions. Based on these results preliminary conclusions are drawn about the computational nature of neocortical neuronal systems.Technical report DCS-TR-37
Visual attention and retinal fixation: preprocessing modules for enhanced performance in real-time vision
In systems that operate in real time, the manner in which resources are allocated often determines the success of a system or the failure thereof. The human visual system manages to operate in real time by repeating in order, processes of Fixation, Attention and Recognition. In essence, it chooses regions of interest in the visual scene and subsequently concentrates its computational resources on them. In this paper, we attempt to emulate this characteristic of the human visual system. We present operators for Visual Attention and Retinal Fixation, neural architectures that implement them, and simulation results that confirm the effectiveness of the underlying mechanisms. We also discuss the biological plausibility of our model in light of some of the available data on the functional characteristics of the visual system.Technical report lcsr-tr-23
Inductive learning of feature-tracking rules for scientific visualization
Numerical simulation and scientific visualization are often used by scientists to help them understand physical phenomena. One approach taken by some visualization systems is to identify and quantify coherent features in a simulation and track their trajectories as they evolve over time. Such feature-tracking systems operate either by relying on manual (human) efforts, or by utilizing ad hoc programs embodying heuristics that are computationally expensive to use. Our research demonstrates the use of inductive learning to construct feature-tracking programs for fluid flows. Our approach uses manually generated feature trajectories as training data, and applies inductive learning to construct feature-tracking rules that can then be incorporated into a feature-tracking program. This results in a more efficient system that can match up objects across large time steps without inspecting intermediate steps. We demonstrate our approach on the problem of tracking vortices in turbulent viscous fluids.Technical report hpcd-tr-2
Human Performance on Clustering Web Pages
With the increase in information on the World Wide Web it has become difficult to find desired information quickly without using multiple queries or using a topic-specific search engine. One way to help in the search is by grouping HTML pages together that appear in some way to be related. In order to better understand this task, we performed an initial study of human clustering of web pages, in the hope that it would provide some insight into the difficulty of automating this task. Our results show that subjects did not cluster identically; in fact, on average, any two subjects had little similarity in their web-page clusters. We also found that subjects generally created rather small clusters, and those with access only to URLs created fewer clusters than those with access to the full text of each web page. Generally the overlap of documents between clusters for any given subject increased when given the full text, as did the percentage of documents clustered. When analyzing individual subjects, we found that each had different behavior across queries, both in terms of overlap, size of clusters, and number of clusters. These results provide a sobering note on any quest for a single clearly correct clustering method for web pages.Technical report DCS-TR-35
