Upcoming event
Data Analysis Workshop 2024
The ICIC will run an in-person Data Analysis Workshop, supported by STFC and the ICIC, from 17th - 20th September 2024.
If you would like to attend, please fill in this registration form.
Please note: Registration closed on the August 26th 2024, **Registrations received after the closing date will be put on the waiting list in case of any cancellations
Course details and downloadable course materials for each year of the Data Analysis Workshops
ICIC Data Analysis Workshop, September 17-20 2024
Registration: Blackett Building Level 2, Foyer Area on Tuesday 17th from 1pm-2pm
Luggage: you can leave luggage at the residence hall before the school.
Principled statistical methods for researchers
Venue: In person, delivered by Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London. The Workshop is taking place in the Blackett Building , Level 1, Lecture theatre 2
Dates: Starts: Tuesday 2 p.m. 17 September 2024. Ends: 4 p.m. Friday 20 September 2023.
PROGRAMME
The course is primarily an introduction to Bayesian statistics with specific applications to Astrophysics and related fields. Please see this year's programme here: Programme ICIC Workshop 2024
Preliminary exercise
Please code the Preliminary exercise before coming to the workshop. It is largely to check that you have a computer language set up on your laptop, can read in files (Supernova data file jla_mub.txt) and plot data. Note that we expect participants to bring their own laptop.
Practical information
We will start at 2pm on Tuesday (registration from 1pm). There will be a reception on Tuesday evening and a dinner on Thursday. Wednesday evening is free — there are plenty of restaurants near South Kensington station, and on Gloucester Road two blocks west of College.
Travel and location
The Blackett Laboratory (location of the ICIC and the lectures) are very close to the Royal Albert Hall in South Kensington. College postcode is SW7 2AZ. You can enter Blackett (in square A2 on the campus map) from Prince Consort Road. The workshop will be held in Blackett Laboratory.
Nearest tube stops are South Kensington and Gloucester Road (both 10 mins walk), and there are buses which pass close by — see the map and the TfL website for details. There is a long tunnel from South Kensington station to close to the College entrance, but if the weather is fine, you may prefer to head up to street level and walk along Exhibition Road.
You may find the Journey Planner facility useful. Note that it is worth buying a pay-as-you-go Oyster card if you are going to use the system at all - the fares are much cheaper than buying individual tickets. You can also use a UK contactless payment card (and some others), which has the same fares as Oyster.
Accommodation
We have a block booking for accommodation for 3 nights (17, 18, 19 September) in College accommodation nearby.
Address: Southside Halls of Residence (Falmouth Hall) Prince's Gardens London, SW7 1BA
Check-in time: 14:00
Guests will be requested an ID and to sign a group check in sheet.
Organising Committee: Lecturers and Demonstrators
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Prof Daniel Mortlock (ICIC Physics and Mathematics)
- Dr Natalia Porqueres (Oxford Astrophysics)
- Dr Lorne Whiteway (UCL)
Code of Conduct
The meeting has a Code of Conduct. By registering at the beginning of the workshop, you are agreeing to abide by it.
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed principally at first- and second-year PhD students, but also may be of interest to postdocs and researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan combines lectures with hands-on computational work. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to have their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee. No fee is payable for STFC and self-funded students. Tuition and accomodation fees for other students are stated on the registration and financial forms. STFC and self-funded students can claim back for travel directly from STFC with UK Bank Account NEE Claim Form and Non-UK Bank Account NEE Claim Form.
SOCIAL EVENTS
We will have a welcome reception on Tuesday evening, and a barbecue on Thursday evening.
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Point of contact: Dr Boris Leistedt <b.leistedt@imperial.ac.uk>, Professor Andrew Jaffe <a.jaffe@imperial.ac.uk>, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email Paula Consiglio for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk or 0207 594 7824.
ICIC Data Analysis Workshop, September 12-15 2023
Registration: Opens 1 p.m. outside room 2.28 of the Royal School of Mines (RSM 2.28) — B2 on the campus map. Enter from Prince Consort Road or Dalby Court.
Luggage: you can leave luggage at Beit hall before the school.
Principled statistical methods for researchers
Venue: In person, delivered by Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London.
Dates: Starts: Tuesday 2 p.m. 12 September 2023. Ends: 4 p.m. Friday 15 September 2023.
PROGRAMME
The course is primarily an introduction to Bayesian statistics with specific applications to astrophysics and related fields. The programme is available here.
Preliminary exercise
Please code the Preliminary exercise before coming to the workshop. It is largely to check that you have a computer language set up on your laptop, can read in files (Supernova data file jla_mub.txt) and plot data. Note that we expect participants to bring their own laptop.
Practical information
We will start at 2pm on Tuesday (registration from 1pm). There will be a reception on Tuesday evening and a dinner on Wednesday. Thursday evening is free — there are plenty of restaurants near South Kensington station, and on Gloucester Road two blocks west of College.
Travel and location
Both the Blackett Laboratory (location of the ICIC) and the Royal School of Mines (location of the lectures) are very close to the Royal Albert Hall in South Kensington. College postcode is SW7 2AZ. You can enter Blackett (in square A2 on the campus map) from Prince Consort Road. The workshop will be held in RSM 2.28.
Nearest tube stops are South Kensington and Gloucester Road (both 10 mins walk), and there are buses which pass close by — see the map and the TfL website for details. There is a long tunnel from South Kensington station to close to the College entrance, but if the weather is fine, you may prefer to head up to street level and walk along Exhibition Road.
You may find the Journey Planner facility useful. Note that it is worth buying a pay-as-you-go Oyster card if you are going to use the system at all - the fares are much cheaper than buying individual tickets. You can also use a UK contactless payment card (and some others), which has the same fares as Oyster.
Accommodation
We have a block booking for accommodation for 3 nights (12,13,14 September) in College accommodation nearby (Beit Hall, squares A1-2, main entrance from Prince Consort Road).
Organising Committee: Lecturers and Demonstrators
- Ellie Gleave (ICIC Physics)
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Prof Daniel Mortlock (ICIC Physics and Mathematics)
- Carina Norregaard (ICIC Physics)
- Dr Natalia Porqueres (Oxford Astrophysics)
- Dr Elena Sellentin (Leiden)
- Dr Lorne Whiteway (UCL)
Code of Conduct
The meeting has a Code of Conduct. By registering at the beginning of the workshop, you are agreeing to abide by it.
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed principally at first- and second-year PhD students, but also may be of interest to postdocs and researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan combines lectures with hands-on computational work. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to have their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee. No fee is payable for STFC and self-funded students. Tuition and accomodation fees for other students are stated on the registration and financial forms. STFC and self-funded students can claim back for travel directly from STFC with UK Bank Account NEE Claim Form and Non-UK Bank Account NEE Claim Form.
SOCIAL EVENTS
We will have a welcome reception on Tuesday evening, and a barbecue on Wednesday evening.
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Point of contact: Professor Andrew Jaffe, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.jaffe@imperial.ac.uk Tel. 0207 594 7526, or Paula Consiglio for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk or 0207 594 7824.
ICIC Data Analysis Workshop, September 13-16 2022
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NEW:
Registration: Opens 1 p.m. on the Level 2 foyer of Blackett Lab. Enter from Prince Consort Road (A2 on the campus map) and go down a short flight of stairs.
Covid test: please take one before travelling, if at all possible.
Luggage: you can leave luggage at the Southside halls of residence before the school.
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Principled statistical methods for researchers
Venue: In person, delivered by Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London.
Dates: Starts: Tuesday 2 p.m. 13 September 2022. Ends: 4 p.m. Friday 16 September 2022.
PROGRAMME
Details will be published here, but see previous workshops for an idea of the material covered. It is very largely a Bayesian course.
Preliminary exercise
Please code the Preliminary exercise before coming to the workshop. It is largely to check that you have a computer language set up on your laptop, can read in files (Supernova data file jla_mub.txt) and plot data. Note that we expect participants to bring their own laptop.
Practical information
We will start after lunch on Tuesday. Wednesday evening is free - there are plenty of restaurants near South Kensington station, and on Gloucester Road two blocks west of College.
Travel and location
The Blackett Laboratory is very close to the Royal Albert Hall in South Kensington. College postcode is SW7 2AZ. You can enter Blackett (in square A2 on the campus map) from Prince Consort Road. The workshop will be held in Lecture Theatre 2 of Blackett, which is on Level 1 of the building. On entering the building, go down a short flight of stairs, and either take the lift one flight down, or better to walk pass the lifts, turn left and take the stairs.
Nearest tube stops are South Kensington and Gloucester Road (both 10 mins walk), and there are buses which pass close by - see the map and the TfL website for details ( http://www.tfl.gov.uk/ ). There is a long tunnel from South Kensington station to close to the College entrance, but if the weather is fine, you may prefer to head up to street level and walk along Exhibition Road.
You may find the Journey Planner facility useful. Note that it is worth buying a pay-as-you-go Oyster card if you are going to use the system at all - the fares are much cheaper than buying individual tickets. You can also use a UK contactless payment card (and some others), which has the same fares as Oyster.
Accommodation
We have a block booking for accommodation for 3 nights (13,14,15 September) in College accommodation nearby (Southside, square C3).
Organising Committee: Lecturers and Demonstrators
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Dr Daniel Mortlock (ICIC Physics and Mathematics)
- Dr Jonathan Pritchard (ICIC Physics)
- Dr Boris Leistedt (ICIC Physics)
- Dr Natalia Porqueres (ICIC Physics)
- Dr Lorne Whiteway (UCL)
- Kimeel Sooknunan (ICIC Physics)
Code of conduct
The meeting has a Code of Conduct. By registering at the beginning of the workshop, you are agreeing to abide by it.
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed principally at first- and second-year PhD students, but also may be of interest to postdocs and researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan combines lectures with hands-on computational work. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to have their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee, and the series is also generously supported by Winton Capital. No fee is payable for STFC and self-funded students. A fee including accommodation of £383 applies for postgraduate students sponsored by bodies other than STFC, who meet STFC’s residence requirements for eligibility for a STFC studentship. Other postgraduate students, including employees of Government Departments, Public Bodies or Industry pay full fees covering both tuition and student accommodation costs of £418.60.
SOCIAL EVENTS
We will have a welcome reception on Tuesday evening, and a barbecue on Thursday evening.
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Point of contact: Professor Alan Heavens, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.heavens@imperial.ac.uk Tel. 0207 594 2930, or Paula Consiglio for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk or 0207 594 7824.
ICIC Data Analysis Workshop, September 14-17 2021
Principled statistical methods for researchers
Venue: Online, delivered by Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London.
Dates: Starts: 9 a.m. (BST) 14 September 2021. Ends: 4 p.m. 17 September 2021.
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IMPORTANT: We are using Discord to communicate and place workshop materials. Please make sure you have joined our Discord server (see email sent to participants).
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PROGRAMME
See Discord server.
Registration
Registration is closed. Attendees were selected randomly, and we apologise to those who we were unable to accommodate.
Organising Committee: Lecturers and Demonstrators
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Dr Daniel Mortlock (ICIC Physics and Mathematics)
- Dr Jonathan Pritchard (ICIC Physics)
- Dr Boris Leistedt (ICIC Physics)
- Dr Natalia Porqueres (ICIC Physics)
- Dr Florent Leclercq (ICIC Physics)
Code of conduct
The meeting has a Code of Conduct. By registering at the beginning of the workshop, you are agreeing to abide by it.
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed at PhD students, postdocs and any researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan is to combine lectures with hands-on computational work in the afternoons. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College, but this year will be delivered online. Hours will be 9 a.m.-5 p.m. British Summer Time.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to have their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee, and the series is also generously supported by Winton Capital. No fee is payable.
SOCIAL EVENTS
We plan to have some sort of online social event for one of the evenings.
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Course team
Prof Alan Heavens, Prof Andrew Jaffe, Dr Jonathan Pritchard, Dr Boris Leistedt, Dr Natalia Porqueres (ICIC Physics), Dr Florent Leclercq, and Dr Daniel Mortlock (ICIC Physics and Mathematics; University of Stockholm)
Point of contact: Professor Alan Heavens, Director, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.heavens@imperial.ac.uk Tel. 0207 594 2930, or Paula Consiglio or Dion Kordopati for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk or 0207 594 7824.
ICIC Data Analysis Workshop, September 3-6 2018
Principled statistical methods for researchers
Venue: Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London.
Dates: Starts: 2 p.m. 3 September 2016. Ends: 4 p.m. 6 September 2016.
NEWS: VENUE DIFFERENT ON THURSDAY
On Thursday, the school will be in the Royal School of Mines, Lecture Theatre 1.31. Entrance on Prince Consort Road (turn left out of Beit Hall).
PROGRAMME
This is the current version of the Workshop Programme. Please check back from time-to-time, as it may evolve.
Registration
Registration is now CLOSED due to high demand.
Registration form ICIC Data Analysis Workshop 2018 (Word).
Please contact Paula Consiglio or Dion Kordopati for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk.
Lecturers and Demonstrators
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Dr Daniel Mortlock (ICIC Physics and Mathematics)
- Dr Jonathan Pritchard (ICIC Physics)
- Dr Elena Sellentin (University of Leiden)
- Dr Roberto Trotta (ICIC Physics)
Code of conduct
The meeting has a Code of Conduct. By registering at the beginning of the workshop, you are agreeing to abide by it.
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed at PhD students, postdocs and any researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan is to combine lectures with hands-on computational work in the afternoons. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to bring their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee, and also a generous donation from Winton Capital.
STFC-funded students will have accommodation, meals, refreshments and social activities paid for, and can also claim travel from STFC. Other participants may need to pay accommodation costs and a modest course fee - see the registration page for more details of eligibility for cost reductions.
Accommodation
We have reserved rooms in Imperial College Student Accommodation, within easy walking distance of the workshop.
SOCIAL EVENTS
We will have a reception on Monday evening, and a barbecue on Tuesday evening, after a short talk from Dr Geraint Harker, VP Research at Winton, and former Astronomer, on using statistical methods in finance. Wednesday evening will be free to allow participants to explore London.
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Course team
Prof Alan Heavens, Prof Andrew Jaffe, Dr Jonathan Pritchard, Dr Daniel Mortlock (ICIC Physics and Mathematics; University of Stockholm), Dr Elena Sellentin (University of Leiden), Dr Roberto Trotta (ICIC Physics)
Point of contact: Professor Alan Heavens, Director, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.heavens@imperial.ac.uk Tel. 0207 594 2930, or Paula Consiglio or Dion Kordopati for adminstrative matters, at fundamental-physics-admin@imperial.ac.uk or 0207 594 7824.
Practical info
Travel
The Huxley Building is very close to the Royal Albert Hall in South Kensington. You enter Huxley (No. 13 on the map) from the Queen's Gate road side. Nearest tube stops are South Kensington and Gloucester Road (10 mins walk), and there are buses which pass close by - see the map and the TfL website for details ( http://www.tfl.gov.uk/ ). You may find the Journey Planner facility useful. Note that it is worth buying a pay-as-you-go Oyster card if you are going to use the system at all - the fares are much cheaper than buying individual tickets. You can also use a UK contactless payment card (and some others), which has the same fares as Oyster.
From South Kensington Underground station: if it's raining, when you come through the barriers, you can turn right below ground and take the long tunnel from the station, which emerges pretty much at the bottom of the main map (attached). Otherwise, it's preferable to go straight ahead and head up for the daylight, exit to street level immediately, turning right to get into Thurloe St (this is mostly pedestrianised now) - it's a more pleasant walk above ground past the museums.
Travel claims (UKRI STFC-funded students)
STFC Claim Form for UKRI STFC-funded students, covering travel and meals not provided by the workshop, should be filled in, signed (no electronic signatures), scanned and sent with scanned receipts to Susan Blackwell, at studentships@stfc.ukri.org
HANDOUTS
Preliminary Exercise:
Please do this: Preliminary exercise (pdf) BEFORE the workshop!
Supernova data file: jla_mub Covariance matrix (not needed for prelimary exercise): jla_mub_covmatrix
DAY 1
Introduction, map and social programme
Lecture notes (Alan): Introduction to Bayes
Lecture notes (Elena): Distributions and Marginalisation
DAY 2
Lecture notes (Daniel): Sampling
Case study notes (Alex Geringer-Sameth): Poisson counts in a background
Eddington 1919 eclipse problem: Eddington 1919 eclipse
Supernova cosmology problem: Supernova Hubble Diagram
DAY 3
Lecture notes (Andrew): HMC and Gibbs sampling
Python notebook: Andrew's python and Stan code (zip file)
Lecture notes (Elena): Convergence tests
Lecture notes (Alan): Bayesian Hierarchical Models (with more detail)
Model comparison exercises (Roberto): Model comparison exercises
DAY 4
Lecture notes from Thursday and Friday (Roberto): Model Comparison
Lecture notes (Elena): Bayesian vs Frequentist
ICIC Data Analysis Workshop, September 5-8 2016
Principled statistical methods for researchers
Venue: Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London.
Dates: Starts: 2 p.m. 5 September 2016. Ends: 4 p.m. 8 September 2016.
Registration
Registration is now closed. Please contact Louise Hayward for adminstrative matters l.hayward@imperial.ac.uk.
Lecturers and Demonstrators
- Prof Alan Heavens (ICIC Physics)
- Prof Andrew Jaffe (ICIC Physics)
- Dr Daniel Mortlock (ICIC Physics and Mathematics)
- Dr Jonathan Pritchard (ICIC Physics)
- Dr Elena Sellentin (University of Geneva and ICIC Physics)
List of Participants
A list of registered participants will be available later.
Code of conduct
The meeting has a code of conduct: Meeting Code of Conduct
STFC claim form
For STFC- and self-funded students, travel and extra subsistence can be claimed using STFC Claim form. Rerturn to Studentships, STFC, Polaris House, North Star Avenue, Swindon SN2 1SZ
Handouts
Preliminary Exercise:
Please do this BEFORE the workshop!
Instructions and background: Preliminary Exercise 2016
Supernova data file: jla_mub
Covariance matrix: jla_mub_covmatrix
Workshop handouts:
- Programme and logistics: Welcome Pack
- Day 1 exercises: Hands on Day 1 2016
- Day 1 lecture - Alan Heavens: ICIC Workshop Lecture 1 2016 final
- Day 1 lecture - Jonathan Pritchard: Marginalisation_JRP
- Day 2: SN MCMC exercise instructions (updated from paper copy): SN MCMC project 2016
- Day 2: Gelman-Rubin formula: Gelman Rubin from SAS ST
- Day 2 lecture - Daniel Mortlock: Metropolis DM
- Day 2 lecture - Alan Heavens: CLT and the Lighthouse problem (also a better answer to Day 1 problem) CLT and Lighthouse Problem
- Day 3 lecture - Andrew Jaffe: Gibbs, HMC, Linear Models Gibbs HMC GLM AJ
- Day 3 lecture - Elena Sellentin: Model comparison Model Selection ES
- Day 4 - Jonathan Pritchard: Nested sampling Nested Sampling JRP
- Day 4 - Elena Sellentin: Frequentist and Bayesian Noise vs Signal ES
- Day 4 - Alan Heavens: Bayesian Hierarchical Models BHM AH
- Day 4 - Alan Heavens: SDDR slide SDDR slide
- Day 4 - Roberto Trotta: Public Engagement Lunch PE Lunch RT
Resource
Inverse covariance matrix: Inverse covariance
Summary
We will run a 4-day course/workshop on statistical methods and tools for data analysis, aimed at PhD students, postdocs and any researchers interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan is to combine lectures with hands-on computational work in the afternoons. It will concentrate on setting down firm foundations of principled Bayesian data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology (ICIC) at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to bring their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts.
Costs
The workshop has sponsorship from STFC's Education, Training and Careers Committee, and also a generous donation from Winton Capital.
STFC-funded students will have accommodation, meals, refreshments and social activities paid for, and can also claim travel from STFC. Other participants may need to pay accommodation costs and a £75 course fee - see the registration page for more details of eligibility for cost reductions.
Accommodation
We have reserved rooms in Imperial College Student Accommodation, in Beit Hall, within easy walking distance of the workshop.
SOCIAL EVENTS
There will be a drinks reception on the roof terrace on Monday evening, and a barbecue at Princes Gate on Wednesday. Tuesday evening will be free to allow participants to explore London.
Provisional Programme
Day 1 (Monday 5 September 2016). Clore Lecture Theatre, Huxley Building
- From 1.30 p.m. Registration.
- Start of Workshop 2 p.m.
- Bayesian Foundations:
- What is probability?
- The Laws of Probability and Bayes’ Theorem
- Priors
- Parameter inference
- Marginalization
- Confidence intervals, credibility intervals
- Problem class: Simple problems
- Tutorial: day summary
- Talk by Dr Geraint Harker (Winton Capital and UCL Astrophysics)
- End: 5.30 p.m.
- Drinks reception. Roof Terrace, Level 8, Blackett Lab.
Day 2 (Tues 6 September 2016). Skempton Building Lecture Theatre 201
- Bayesian Computation: Parameter Estimation and Sampling
- Grid-based methods
- Markov Chain Monte Carlo
- Metropolis-Hastings algorithm
- Convergence tests – Rubin-Gelman
- Hands on: MCMC code from scratch. Cosmology from the Supernova Hubble Diagram.
- Day summary
- End: 5 p.m.
- Evening: free
Day 3 (Weds 7 September 2016) Clore Lecture Theatre, Huxley Building
- Gibbs Sampling
- Hamiltonian Monte Carlo
- Day summary
- End: 5 p.m.
- 6 p.m. Workshop Barbecue. 58 Princes Gate.
Day 4 (Thurs 8 September 2016) Clore Lecture Theatre, Huxley Building
- Why not p-values and reduced chisquared?
- Model Comparison with Bayesian Evidence
- Hands on: Bayesian evidence: the Savage-Dickey Density Ratio
- Bayesian Hierarchical Models
- Workshop summary
- 4 p.m. End of Workshop
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Course team
Prof Alan Heavens, Prof Andrew Jaffe, Dr Jonathan Pritchard, Dr Daniel Mortlock (ICIC Physics and Mathematics), Dr Elena Sellentin (University of Geneva/ICIC Physics)
Point of contact: Professor Alan Heavens, Director, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.heavens@imperial.ac.uk Tel. 0207 594 2930, or Louise Hayward (l.hayward@imperial.ac.uk) 0207 594 7679.
Practical info
Travel
The Huxley Building is very close to the Royal Albert Hall in South Kensington. You enter Huxley (No. 13 on the map) from the Queen's Gate road side. Nearest tube stops are South Kensington and Gloucester Road (10 mins walk), and there are buses which pass close by - see the map and the TfL website for details ( http://www.tfl.gov.uk/ ). You may find the Journey Planner facility useful. Note that it is worth buying a pay-as-you-go Oyster card if you are going to use the system at all - the fares are much cheaper than buying individual tickets. You can also use a (UK only) contactless payment card, which has the same fares as Oyster.
From South Kensington Underground station: if it's raining, when you come through the barriers, you can turn right below ground and take the long tunnel from the station, which emerges pretty much at the bottom of the main map (attached). Otherwise, it's preferable to go straight ahead and head up for the daylight, exit to street level immediately, turning right to get into Thurloe St (this is mostly pedestrianised now) - it's a more pleasant walk above ground past the museums.
ICIC Data Analysis Workshop 2014
Preparatory Exercise is Preliminary Exercise 2014
Supernova data file is SN
Lectures
Monday
- Alan Heavens The Bayesics
- Jonathan Pritchard Gaussian Stats
Tuesday
- Andrew Jaffe Sampling
- source (change to .ipynb): Sampling.ipynb
- Daniel Mortlock Daniel notes ICIC
Thursday
- Alan Heavens HMC lectures
PROBLEM SHEETS and COMPUTATIONAL exercises
Day 1 problems: Hands on Day 1 Problems
Day 2 problems: Sampling Problems and solutions (Sampling Solutions / Sampling Solutions.ipynb)
Day 2-4 computations: SN MCMC project
Gelman-Rubin formula: Gelman Rubin from SAS STAT Users Guide
DATA
(for Importance Sampling advanced exercise).
Planck chains are available here.
Choose one of the sets of 'key chains'. You will get a zip file with a set of MCMC chains. There is also a file telling you which order the parameters are in "...paramnames". You may need to compute Omega_m from Omega_m=Omega_b+Omega_c, and the parameters include Omega_b h^2 and Omega_c h^2, so you need to find the column with h in it as well.
ICIC Data Analysis Workshop, September 11-13 2013
Principled statistical methods for researchers
Venue: Imperial Centre for Inference and Cosmology (ICIC), Imperial College, South Kensington, London. Workshop in Huxley Building, Room 311.
Dates: 11-13 September 2013
Lecturers
Prof Alan Heavens (ICIC Physics)
Prof Andrew Jaffe (ICIC Physics)
Dr Roberto Trotta (ICIC Physics)
Dr Daniel Mortlock (ICIC Physics and Mathematics).
Lecture Handouts:
Alan Heavens:
Presentation: ICIC Data Analysis lectures
Case study: Population Mean
Andrew Jaffe:
Presentation 1: Probability: more examples and concepts
Presentation 2: CMB Case Study
Daniel Mortlock:
Presentation 1: Parameter estimation
Presentation 2: Hypothesis tests
Roberto Trotta:
Summary notes day 3
Slides day 3
Hands-On Handouts:
Day 0:
Preliminary Exercise
Data: SN
Day 1:
Day 2:
SN MCMC Project
For general Universes:
Here LumDistRows is a file with DL*(z) for different pairs of Om, Ov (matter, vacuum energy)
Schematically:
for Om=0 to 1 in steps of 0.01 (101 points)
for Ov=0 to 1 in steps of 0.01
A line of DL(z) for z=0 to 1.8 in steps of 1.8 (181 points), separated by spaces
end
end
Day 3:
Model comparison exercises
This event took place in 2013
Latest news
We will have a wine reception on Wednesday after the afternoon session. Details at the workshop.
Otherwise each day will finish at 5 p.m.
Summary
We will run a 3-day course/workshop on statistical methods and tools for data analysis, aimed at PhD students, postdocs and any staff interested in understanding Bayesian statistics and numerical techniques of data analysis. The course plan is to combine morning lectures with problem sets and practical work in the afternoons. It will concentrate on setting down firm foundations of principled data analysis, but a feature of the workshop will be a substantial element of hands-on classes where participants will learn how to apply the ideas in practice. It will be hosted by the Imperial Centre for Inference and Cosmology at Imperial College.
Background
Most researchers will at some point be required to perform some form of data analysis. This may be anything from simple line-fitting, through parameter estimation, to complex and computationally-demanding sampling for model selection on large datasets. Anecdotal evidence suggests that many researchers are not well prepared for this, often doing the right thing incorrectly, or picking up an inappropriate statistical tool. The purpose of this course is to provide understanding of principled data analysis, and experience of applying appropriate methods to data.
Preparation
We expect all participants to bring their own laptop, and to do a simple computational exercise in advance (in whatever language suits) to ensure they have appropriate software in place before the workshop starts. The instructions are here: Preliminary Exercise. The data file of supernovae is here: SN
Costs
There will be a small registration fee of £20 to cover refreshments. Participants will be responsible for all other travel and subsistence costs. Inexpensive lunch is readily available on campus.
Registration
This event took place in 2013. Registration is now closed.
Draft programme
Day 1 (Weds 11 September 2013)
- 9.15 a.m. Registration, coffee and pastries. 311 Huxley Building
- Start of Workshop 9.45 a.m.
- Bayesian Foundations:
- What is probability?
- The Laws of Probability and Bayes’ Theorem
- Priors
- Parameter inference
- Marginalization
- Confidence intervals, credibility intervals
- Problem class: Simple problems
- Tutorial: day summary
- End: 5 p.m.
Day 2 (Thurs 12 September 2013)
- Bayesian Computation: Parameter Estimation and Sampling
- Grid-based methods
- Markov Chain Monte Carlo
- Metropolis-Hastings algorithm
- Convergence tests – Rubin-Gelman
- Gibbs Sampling
- Hamiltonian Monte Carlo
- Case Study: Cosmic Microwave Background
- Hands on: MCMC code from scratch. Cosmology from the Supernova Hubble Diagram.
- Tutorial: day summary
- End: 5 p.m.
Day 3 (Fri 13 September 2013)
- Why not p-values and reduced chisquared?
- Model Comparison with Bayesian Evidence
- Case study: is the Universe flat?
- Hands on: model comparison calculations and computations &/or complete MCMC codes.
- Tutorial: wrap up the workshop
- 5 p.m. End of Workshop
Learning outcomes
At the end of the Workshop, the participants should be able to (non-exhaustive list):
- Express stochastic problems in terms of fundamental probability and Bayes’ theorem.
- Demonstrate by application to real data understanding of probability, inference, priors, posteriors, marginalisation, parameter estimation, hypothesis testing, model selection, sampling.
- Code and apply a simple MCMC program to physical data.
- Formulate model selection problems in a principled statistical framework, and be capable of executing some methods of solution.
Course team
Prof Alan Heavens, Prof Andrew Jaffe, Dr Roberto Trotta (ICIC Physics); Dr Daniel Mortlock (ICIC Physics and Mathematics).
Point of contact: Professor Alan Heavens, Director, Imperial Centre for Inference and Cosmology, Blackett Laboratory, Prince Consort Road, London SW7 2AZ. Email a.heavens@imperial.ac.uk Tel. 0207 594 2930, or Rachel Groom (r.groom@imperial.ac.uk) 0207 594 7770.
Inaugural workshop
The ICIC inaugural workshop was held in London on Aug 20-21st 2012. Find out more about the event.