Komogortsev, OlegJayarathna, SampathKoh, Do HyongGowda, Sandeep Munikrishne2009-11-232012-02-242009-09-16Komogortsev, O. V., Jayarathna, S., Koh, D. H., & Gowda, S. M. (2009). Qualitative and quantitative scoring and evaluation of the eye movement classification algorithm (Report No. TXSTATE-CS-TR-2009-16). Texas State University-San Marcos, Department of Computer Science.https://hdl.handle.net/10877/2577This paper presents a set of qualitative and quantitative scores designed to assess performance of the various eye movement classification algorithms. The scores are designed to provide a foundation for the eye tracking researchers to communicate about the performance validity of various eye movement classification algorithms. The paper concentrates on the five algorithms in particular: Velocity Threshold Identification (I-VT), Dispersion Threshold Identification (I-DT), Minimum Spanning Tree Identification (MST), Hidden Markov Model Identification (I-HMM) and Kalman Filter Identification (I-KF). The paper presents an evaluation of the classification performance of each algorithm in the case when values of the input parameters are varied. Advantages provided by the new scores are discussed. Discussion on what is the \"best\".Text10 pages1 file (.pdf)eneye movementsclassificationalgorithmanalysisscoringmetricsComputer ScienceQualitative and Quantitative Scoring and Evaluation of the Eye Movement Classification AlgorithmsTechnical Report