View source: R/BTdecayLassoC.R
BTdecayLassoC | R Documentation |
Model selection via AIC or BIC criteria. For Lasso estimators, the degree of freedom is the number of distinct groups of estimated abilities.
BTdecayLassoC(
dataframe,
ability,
weight = NULL,
criteria = "AIC",
type = "HYBRID",
model = NULL,
decay.rate = 0,
fixed = 1,
thersh = 1e-05,
iter = 100,
max = 100
)
dataframe |
Generated using |
ability |
A column vector of teams ability, the last row is the home parameter.
The row number is consistent with the team's index shown in dataframe. It can be generated using |
weight |
Weight for Lasso penalty on different abilities |
criteria |
"AIC" or "BIC" |
type |
"HYBRID" or "LASSO" |
model |
An Lasso path object with class wlasso or swlasso. If NULL, the whole lasso path will be run. |
decay.rate |
The exponential decay rate. Usually ranging from (0, 0.01), A larger decay rate weights more importance to most recent matches and the estimated parameters reflect more on recent behaviour. |
fixed |
A teams index whose ability will be fixed as 0. The worstTeam's index
can be generated using |
thersh |
Threshold for convergence |
iter |
Number of iterations used in L-BFGS-B algorithm. |
max |
Maximum weight for |
This function is usually run after the run of whole Lasso path. "model" parameter is obtained by whole
Lasso pass's run using BTdecayLasso
. If no model is provided, this function will run Lasso path first (time-consuming).
Users can select the information score added to HYBRID Lasso's likelihood or original Lasso's likelihood. ("HYBRID" is recommended)
summary() function can be applied to view the outputs.
Score |
Lowest AIC or BIC score |
Optimal.degree |
The degree of freedom where lowest AIC or BIC score is achieved |
Optimal.ability |
The ability where lowest AIC or BIC score is achieved |
ability |
Matrix contains all abilities computed in this algorithm |
Optimal.lambda |
The lambda where lowest score is attained |
Optimal.penalty |
The penalty (1- s/ |
type |
Type of model selection method |
decay.rate |
Decay rate of this model |
Masarotto, G. and Varin, C.(2012) The Ranking Lasso and its Application to Sport Tournaments. *The Annals of Applied Statistics* **6** 1949–1970.
Zou, H. (2006) The adaptive lasso and its oracle properties. *J.Amer.Statist.Assoc* **101** 1418–1429.
BTdataframe
for dataframe initialization,
BTdecayLasso
for obtaining a whole Lasso path
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.