Query Results

Number of results 0
Abstracts of input examples inputs.html
Complete abstracts of the Medline records given as relevant training examples. They have been ranked by classifier scores.
PubMed IDs of results results.txt
PubMed IDs and scores of classifier predictions, ranked by decreasing score.
PubMed IDs of inputs inputs.txt
PubMed IDs and scores of the relevant training examples.
Started at 2008/12/15 20:45:50 GMT
Time at which query was started
Finished at 2008/12/15 20:48:55 GMT
Time at which this file was written.
Feature score method scores_laplace_split
Name of the method used to calculate feature scores. Docstring for the method: For feature probabilities we use a Laplace prior, of 1 success and 1 failure in total, split between the classes according to size. This avoids problems with class skew.
Min Information Gain 2e-05
We exclude features with less than this value of Information Gain.
Base score -112.188785117
The log likelihood ratio of an empty article (one in which every feature failed to occur).
Prior score -15.0411649879
The log of the prior probability ratio for an article being relevant versus irrelevant (added to log likelihood ratio to obtain the final score). Equals the logit of the estimated prevalence of relevant articles in Medline (which may be estimated from the input size or specified separately).
Limit 1000
The maximum number of results to include.
Threshold -10.0
Default Naive Bayes classification threshold is zero. This threshold is the minimum log probability ratio for predicting an article to be relevant.

Feature Statistics

Quantity Relevant Docs Irrelevant Docs
Number of documents 4 17031972
Number of selected, occurring features 251 27471
Total occurrences of selected features 319 810581550
Selected features per Medline record 79.750 47.592
Of the considered feature types, 27471 features are selected out of 3703762 occurring at least once in training data. The aggressivity of selection is 134.824. The complete database lists 3703762 potential features.

Features with high TF.IDF

Features with TF.IDF above 0.2 or 0.3 could make good keywords. TF.IDF is term frequency times inverse document frequency, where we treat the set of input citations as a single document

TF-IDF Type Term Term ID Score Pos Neg
0.13 a k maslov 1380435 15.55 3 7
0.13 w Photoacoustic 225459 26.04 4 568
0.11 a lv wang 822981 13.13 3 99
0.11 a hf zhang 100480 13.06 3 107
0.11 a g stoica 365467 12.87 3 130
0.07 mesh Microscopy, Acoustic 118152 10.42 2 506
0.06 mesh Image Enhancement 10957 7.82 3 20511
0.06 issn 1083-3668 1300747 9.48 2 1295
0.05 w Optical 20594 6.93 3 50069
0.05 w Imaging 8354 19.97 4 242526
0.05 w FPAM 2436945 13.76 1 4
0.05 w Imaged 20061 7.34 2 11049
0.05 a ck liao 1535697 13.25 1 8
0.04 mesh Image Interpretation, Computer-Assisted 16915 7.11 2 13882
0.04 w Reflection-mode 1380437 12.99 1 11
0.04 a cw wei 3319011 12.78 1 14
0.04 w Mm 4145 5.64 3 178834
0.04 mesh Imaging, Three-Dimensional 8685 6.76 2 19706
0.04 w Microscopy 4288 5.56 3 194591
0.04 w Vasculature 8663 6.70 2 20893