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Table 1. Trading horizons and volumes for the conditional vote-share market through March 13

in Information Systems Frontiers 5:1, 79–93, 2003 C ○ 2003 Kluwer Academic Publishers. Manufactured in The Netherlands. Prediction Markets as Decision Support Systems
by unknown authors
"... In PAGE 8: ... There were 39 trading days between February 4, when the market opened, and March 13, the day af- ter Super Tuesday when Forbes dropped out. However, while the horizon was short, Table1 shows that the market was quite active, with nearly 9,000 contracts trading during this time, averaging 222 contracts per day. Fig.... ..."

TABLE 2 NN OPTIMAL SETTINGS FOR 15- AND 20-MINUTE PREDICTIONS BASED ON AARE (a) 15-MINUTE PREDICTION HORIZON

in ACKNOWLEDGEMENTS
by Ciprian-danut Alecsandru 2003
"... In PAGE 5: ...N AARE ............................................................................................................................ 53 TABLE2 NN OPTIMAL SETTINGS FOR 15- AND 20-MINUTE PREDICTIONS BASED ON AARE .... In PAGE 56: ... The network setting with the minimum error is selected as the one that should be used further in the prediction for a certain traffic conditions combination. For example, if one wants to estimate the speed in 10-minute prediction horizon, at free-flow prevailing traffic conditions at each of the three stations, and if AARE is considered as performance measure, than in TABLE2 d) case no. 25 identifies the optimal setting as Jordan-Elman NN with inputs from upstream (Z) and current station(Y), downstream (X) and LTM input.... ..."

Table 1 short horizon long horizon

in Complexity of Finite-Horizon Markov Decision Process Problems
by Martin Mundhenk, Judy Goldsmith, Christopher Lusena, Eric Allender, Name Martin Mundhenk, Name Judy Goldsmith

Table 1 short horizon long horizon

in Complexity of Finite-Horizon Markov Decision Process Problems
by Martin Mundhenk, Judy Goldsmith, Christopher Lusena, Eric Allender

Table 3 short horizon long horizon

in Complexity of Finite-Horizon Markov Decision Process Problems
by Martin Mundhenk, Judy Goldsmith, Christopher Lusena, Eric Allender

TABLE 1. SOME SOIL INPUT DATA USED IN EPIC SIMULATION. PROPERTIES OF BT HORIZONS BELOW THE

in Conservation Tillage:
by Today Andtomorrow Southern, Southern Region, No-till Conference, Thomas J. Gerik, Thomas J. Gerik, Bill L. Harris, Bill L. Harris
"... In PAGE 8: ... TASS describes this 23-county area of 15 million acres as having 5.3million acres of cropland, of which corn (473,000acres),irrigated cotton (430,000acres),dryland cotton (121,000acres), irrigated grain sorghum (520,000 acres), dryland grain sorghum (400,000 acres), soybeans (63,000 acres), irrigated wheat (848,000 acres), and TABLE1 . EXTENT OF CONSERVATION TILLAGE IN TEXAS1 Production Acres No Ridge Strip Reduced Year Cropland Till Ti11 Till Ti11 .... In PAGE 15: ... TABLE1 . CROPPING SEQUENCE AND N RATE Tillage VARIABLES 8 Applied Crop to: N Rate __ Continuous Wheat Wheat 0, 34, 68, 102 Wheat-Soyhean Wheat 0, 34, 68, 102 ________.... In PAGE 22: ... Tillage had no effect on water use efficiency in monocrop soybeans, possibly because of the small quantlty of residue produc ed by this sequence. No-tillage soybeans in the sorghum- wheat-soybean sequence exhibited the greatest water use TABLE1 . TILLAGE AND CROPPING SEQUENCE EFFECTS ON SOYBEAN YIELDS AND WATER USE EFFICIENCY, BURLESON COUNTY, TEXAS, 1985 Cropping Tillage Water use sequence treatment Yield efficiency 1 Sorghum-wheat- No-till 1.... In PAGE 33: ...66 Mg ha apos; average during the six years by no-till. This yield increase would allow an TABLE1 . ESTIMATED COSTS AND PROFITS FROM IRRIGATED SORGHUM WITH ALTERNA TIVE TILLAGE PRACTICES IN AN IRRIGATED WHEAT/SORGHUM/FALLOW ROTATION, TEXAS HIGH PLAINS Conventional Item Tillage apos; No-till apos; Yield, Mg ha- apos; 6.... In PAGE 63: ...TABLE1 . EXAMPLE OF GENERATION OF PLANTING MACHINE FOR SPECIFIC FARM AND CROPPING CONDITIONS Conditions: Location-Henry County, Illinois Soil-Catlin Slope-4.... In PAGE 65: ... Soil-borne mosaic virus survives in the soil, and tillage has little to do with its survival. The life cy- TABLE1 . TILLAGE PRACTICES FOR RESIDUE MANAGEMENT SYSTEMS STUDIES System Residue level Tillage practices Plow minimal moldboard plow, disk as needed, harrow, mulch tread Disk low disk as frequently as needed, mulch tread Subsurface intermediate blade with 6-foot v-blade with treader No-till maximum no tillage Department, Oklahoma State University and Plant Science and Water Conservation Lab USDA-ARS, Stillwater Oklahoma cle of Septoria leaf blotch fungus is not well understood; therefore, the relationship with residue levels left by dif ferent tillage systems was unknown.... In PAGE 70: ...TABLE1 . AVERAGE EFFECTS OF TILLAGE ON SOIL WATER CONTENT, CHEMICAL COMPONENTS, AND SOIL MICROBIAL BIOMASS AS A FUNCTION OF SOIL DEPTH AT SIX (FOUR CONTINUOUS CORN, TWO WHEAT/FALLOW) LONG-TERM (6-13 YEAR) TILLAGE EXPERIMENTS IN THE USA.... In PAGE 74: ...TABLE1 . CROP ROTATION RESULTS AT THE TEXAS AGRICULTURALEXPERIMENT STATION, HALFWAY, TEXAS, 1984-85 Irrigated Beginning Dryland Beginning Cotton Soil Cotton Soil Yield Moisture apos; Yield Moisture Year (kg/ha) (kg/ha) (cm) 1984 -Cotton-Wheat Rotation Continuous Cotton 453.... In PAGE 78: ... Ksand I from rainfall simula tion are reported in Table 2. The effect of antecedent OF A TABLE1 . PROPERTIES OF THE TOP 150 MILES FINE SANDY LOAM (FINE-LOAMY, MIXED, THERMIC UDIC PALEUSTALF) AND AN ABILENE SANDY LOAM SOIL (FINE, MIXED, THERMIC PACHIC ARGUISTOLL) Miles Abilene % % Sand 72.... ..."

Table 2: Evolutionary Horizons

in Protein sequence comparison and Protein evolution
by William R. Pearson
"... In PAGE 4: ...hange that is constant on average. The oldest fossils are of prokaryotes in rocks about 2.5 billion years old; this geological age is consistent with that inferred from evolutionary divergence rates. Table 1 summarizes some important milestones in evolutionary time, and, when considered with Table2 , gives a better perspective on the evolutionary horizons provided by different protein families. The theoretical lookback times in Table 2 are based on the assumption that one can identify proteins that share about 20% sequence identity throughout their entire length.... In PAGE 4: ... Table 1 summarizes some important milestones in evolutionary time, and, when considered with Table 2, gives a better perspective on the evolutionary horizons provided by different protein families. The theoretical lookback times in Table2 are based on the assumption that one can identify proteins that share about 20% sequence identity throughout their entire length. It will be clear from later examples that if two protein sequences share 25% identity across their lengths, they are homologous, and that in... ..."

Table 56: Fixed horizon performance as a function of horizon on the dinero trace.

in A Trace-Driven Comparison of Algorithms for Parallel Prefetching and Caching
by Tracy Kimbrel Andrew, Andrew Tomkins, R. Hugo Patterson, Brian Bershad, Pei Cao, Edward W. Felten, Garth A. Gibson, Anna R. Karlin, Kai Li 1996
Cited by 96

Table 1: Finite Horizon Computations

in Receding Horizon Quadratic Optimal Control: Performance Bounds for a Finite Horizon Strategy
by Vesna Nevistic, James A. Primbs 1997
"... In PAGE 6: ...Table 1: Finite Horizon Computations Table1 presents the results of the nite-horizon computations. The \stability quot; column tabulates 0 ? ( N?1 ? 1) N; which must be positive to guarantee stability (cf.... ..."
Cited by 1

TABLE I ABSTRACTION FOR DIFFERENT HORIZONS

in Bounded model checking of hybrid dynamical system
by Nicolò Giorgetti, George J. Pappas, Alberto Bemporad 2005
Cited by 2
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