IDENTIFYING DATA 2019_20
Subject (*) COMPUTER SCIENCE AND STATISTICS APPLIED TO ARCHAEOLOGY Code 12645101
Study programme
Quaternary Archaeology and Human Evolution (2010)
Cycle 2nd
Descriptors Credits Type Year Period
5 Compulsory First
Language
Anglès
Department History and History of Art
Coordinator
LORENZO MERINO, CARLOS
E-mail sergio.lozano@urv.cat
carlos.lorenzo@urv.cat
Lecturers
LOZANO PÉREZ, SERGIO
LORENZO MERINO, CARLOS
Web http://moodle.urv.cat
General description and relevant information Understand the usefulness of the various fields of statistics for the elaboration of archaeological studies. Provide the master's student with basic concepts of computer tools and software to be able to apply different statistical methods necessary to develop their scientific and professional work.

Competences
Type A Code Competences Specific
  Common
  AC1 To evaluate the updated information in the different fields of research.
  AC2 Have analytical decision capability.
  AC3 To perform technical analysis protocols.
  AC5 Plan the archeological exploration and excavation intervention.
  AC7 To train yourself in the treatment and registration of data.
  AC9 To plan research projects.
  AC11 To have research capacity, generation of paradigm and demonstration.
Type B Code Competences Transversal
  Common
  BC1 Learning to learn.
  BC2 Effective solutions to complex problems.
  BC3 Critical, logical and creative thinking, and an ability to innovate
  BC8 Management of complex technical or professional projects.
Type C Code Competences Nuclear
  Common
  CC1 Have an intermediate mastery of a foreign language, preferably English.
  CC2 Be advanced users of the information and communication technologies.
  CC3 Be able to manage information and knowledge.

Learning aims
Objectives Competences
OE1.- Aplicar correctament l’estadística descriptiva en situacions concretes. AC2
AC3
AC7
AC9
AC11
BC1
BC2
BC3
BC8
CC1
CC2
CC3
OE2.- Determinar els tractaments de dades particulars. AC1
AC2
AC3
AC7
AC9
AC11
BC1
BC3
BC8
CC1
CC2
CC3
OE3.- Distingir els aspectes més destacats de la teoria de mostreig. AC2
AC3
AC5
AC7
AC9
AC11
BC1
BC3
BC8
CC1
CC2
CC3
OE4.- Formular correctament les probabilitats d’esdeveniments concrets. AC2
AC3
AC5
AC7
AC9
AC11
BC1
BC2
BC8
CC1
CC2
CC3
OE5.- Comprendre la distribució normal en casos pràctics i l'us dels intervals de confiança. AC2
AC3
AC7
AC11
BC1
CC1
CC2
CC3
OE6.- Adquirir el domini com eina de les proves de contrast. AC2
AC3
AC7
AC11
BC1
BC2
BC3
CC1
CC2
CC3
OE7.- Avaluar els resultats obtinguts amb anàlisi multivariant. AC2
AC3
AC7
AC11
BC2
CC1
CC2
CC3

Contents
Topic Sub-topic
1. Introduction. - Type of data.
- Tables and graphic representations.
- Software for statistical analysis.
2. Descriptive statistics.

- Descriptive statistics.
- Data processing.
3. Probabilities and distributions. - Sampling theory.
- Probability.
- Normal distribution.
4. Hypotheses testing. - Confidence intervals
- Contrasts from intervals.
- Ji-square test.
- Others tests.
5. Bivariate analysis.
- Analysis of the variance.
- Correlation.
- Regression.
6. Distance and cluster measurements.
- Measures of similarity.
- Clusters methods.
7. Multivariate analysis. - Factorial analysis and principal components analysis.
- Correspondence analysis.

Planning
Methodologies  ::  Tests
  Competences (*) Class hours Hours outside the classroom (**) Total hours
Introductory activities
1 2 3
 
Lecture
16 10 26
Problem solving, exercises in the classroom
29 15 44
Previous study
0 8 8
Assignments
0 40 40
 
Personal attention
4 0 4
 
 
(*) On e-learning, hours of virtual attendance of the teacher.
(**) The information in the planning table is for guidance only and does not take into account the heterogeneity of the students.

Methodologies
Methodologies
  Description
Introductory activities History of statistical and computer applications in the archeology of human evolution.
Lecture Presentation, discussion and analysis of statistical and computer applications in the archeology of human evolution.
Problem solving, exercises in the classroom The student must solve in the classroom the practical questions that will be proposed during the course.
The student must solve some proposed practices in group.
Previous study The student must prepare, for each session, the theoretical contents from the provided material.
Assignments Presentation of an individual work on a statistical problem proposed by the professor in the field of prehistory.
Personal attention Follow-up of the comprehension of the concepts given in the theoretical classes.

Personalized attention
 
Personal attention
Description
1.- Evaluate the individual contribution to the participation of the group work. 2.- Detect the doubts of the contents, in order to be able to correct them. 3.- Promote the search for information and the critical evaluation of the information found. 4.- Promote the use of new technologies and the search for new applications in archeology. 5.- Train the student the ability to choose the right tool for the specific problem. 6.- Provide the student with a critical capacity when assessing the results obtained from computational research. 7.- Provide tools for self-learning in the area of statistics.

Assessment
  Description Weight
Problem solving, exercises in the classroom Solving the problems proposed in the classroom and follow-up of classes. 20%
Assignments Individual report to solve a specific statistical problem. 80%
 
Other comments and second exam session

Los estudiantes matriculados en la URV siguen el sistema ECTS y tienen derecho a las convocatorias de evaluación indicadas en la normativa académica de grado y máster vigente.

Continuous evaluation model is followed. The resolution of the problems raised in the classroom and follow-up of the classes will score 20% of the qualification. The personal work will have 80% of the subject's weight.


Sources of information

Basic

General bibliography:

- Banning, E.B. (2002). The Archaeologist's Laboratory: The Analysis of Archaeological Data. New York: Kluwer Academic Publishers.

- Baxter, M.J. (1994). Exploratory Multivariate Analysis in Archaeology. Edinburgh: Edinburgh University Press.

- Buck, C.E., Cavanagh, W.G. & Litton, C.D. (1996). Bayesian approach to interpreting archaeological data. Statistics in Practice. Wiley.

- Drennan, R.D. (1996). Statistics for Archaeologists: A Commonsense Approach. New York: Plenum.

- Fletcher, M. & Lock, G.R. (1991). Digging numbers. Elementary statistics for Archaeologists. Oxford: Institute of Archaeology. [2nd edition 2005] (*)

- Haining, R. (2003). Spatial Data Analysis: Theory and Practice. Cambridge: Cambridge University Press.

- Martínez-González, M.A., de Irala, J. & Faulin Fajardo, F.J. (2006). Bioestadística amigable 2ª Edición. Madrid: Ed. Díaz de Santos.(*)

-Orton, C. (1980). Mathematics in Archaeology. London: Collins.

- Shennan, S. (1988). Quantifying Archaeology. Edinburgh: Edinburgh University Press.[2nd edition 1997] (*)

- Shennan, S. (1992). Arqueología cuantitativa. Crítica Arqueología. Barcelona: Ed. Crítica.

- Sokal, R.R. & Rohlf, J. (2002). Introducción a la Bioestadística. Barcelona: Ed. Reverté.

- Sokal, R.R. & Rohlf, J. (2003). Biometry. The principles and practice of statistics in biological research - Third Edition. New York: W.H. Freeman and Company.

- Spiegel, M.R. (2001). Estadística (Segunda Edición). Madrid: McGraw-Hill.

(*) Very recommended.

Complementary

Recommendations


(*)The teaching guide is the document in which the URV publishes the information about all its courses. It is a public document and cannot be modified. Only in exceptional cases can it be revised by the competent agent or duly revised so that it is in line with current legislation.