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Info
ecb
SUP
Supervisory Banking Statistics
2024-10-08
[2024-09-19]
bdf
FM
Marché financier, taux
2024-06-18
[2024-07-26]
bdf
MIR
Taux d'intérêt - Zone euro
2024-07-01
[2024-07-26]
bdf
MIR1
Taux d'intérêt - France
2024-07-01
[2024-07-26]
bis
CBPOL
Policy Rates, Daily
2024-09-15
[2024-08-09]
ecb
BSI
Balance Sheet Items
2024-09-16
[2024-10-08]
ecb
BSI_PUB
Balance Sheet Items - Published series
2024-10-08
[2024-10-08]
ecb
FM
Financial market data
2024-10-08
[2024-10-08]
ecb
ILM
Internal Liquidity Management
2024-10-08
[2024-10-08]
ecb
ILM_PUB
Internal Liquidity Management - Published series
2024-09-10
[2024-10-08]
ecb
MIR
MFI Interest Rate Statistics
2024-10-08
[2024-06-19]
ecb
RAI
Risk Assessment Indicators
2024-10-08
[2024-10-08]
ecb
YC
Financial market data - yield curve
2024-09-16
[2024-09-19]
ecb
YC_PUB
Financial market data - yield curve - Published series
2024-10-08
[2024-09-19]
ecb
liq_daily
Daily Liquidity
2024-09-11
[2024-10-08]
eurostat
ei_mfir_m
Interest rates - monthly data
2024-09-15
[2024-09-30]
eurostat
irt_st_m
Money market interest rates - monthly data
2024-10-08
[2024-09-30]
fred
r
Interest Rates
2024-09-18
[2024-09-18]
oecd
MEI
Main Economic Indicators
2024-06-30
[2024-04-16]
oecd
MEI_FIN
Monthly Monetary and Financial Statistics (MEI)
2024-05-21
[2024-09-15]
Last
Code
SUP %>%
group_by (TIME_PERIOD, FREQ) %>%
summarise (Nobs = n ()) %>%
ungroup %>%
group_by (FREQ) %>%
arrange (desc (TIME_PERIOD)) %>%
filter (row_number () == 1 ) %>%
print_table_conditional ()
2024-S1
H
962
2024-Q2
Q
11949
Info
Data Structure Definition (DSD). html
TITLE
Code
SUP %>%
group_by (TITLE) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
{if (is_html_output ()) datatable (., filter = 'top' , rownames = F) else .}
BS_SUFFIX
Code
SUP %>%
left_join (BS_SUFFIX, by = "BS_SUFFIX" ) %>%
group_by (BS_SUFFIX, Bs_suffix) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
E
Euro
289145
PCT
Percentage
95796
LAF
NA
27105
Z
Not applicable
13498
CB_EXP_TYPE
Code
SUP %>%
left_join (CB_EXP_TYPE, by = "CB_EXP_TYPE" ) %>%
group_by (CB_EXP_TYPE, Cb_exp_type) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
ALL
All exposures
289526
_Z
Not applicable
98783
N_
Non-performing exposures
13610
ST2
Assets with significant increase in credit risk since initial recognition but not credit-impaired (Stage 2)
8120
P_
Performing exposures
4108
NFM
Non-performing exposures with forbearance measures
3736
PFM
Performing exposures with forbearance measures
3729
ST1
Assets without significant increase in credit risk since initial recognition (Stage 1)
1420
ST3
Credit-impaired assets (Stage 3)
1420
PCI
Purchased or originated credit-impaired financial assets
1092
CB_ITEM
Code
SUP %>%
left_join (CB_ITEM, by = "CB_ITEM" ) %>%
group_by (CB_ITEM, Cb_item) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
SBS_DI_1
Code
SUP %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
group_by (SBS_DI_1, Sbs_di_1) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
SII
Significant institutions
334548
LSI
Less significant institutions
90996
SBS_BREAKDOWN
Code
SUP %>%
left_join (SBS_BREAKDOWN, by = "SBS_BREAKDOWN" ) %>%
group_by (SBS_BREAKDOWN, Sbs_breakdown) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
_T
Total
245402
AMC
Classification by business model - asset manager & custodian
10515
CWH
Classification by business model - corporate/wholesale lenders
10515
DEV
Classification by business model - development/promotional lenders
10515
DIV
Classification by business model - diversified lenders
10515
NC
Classification by business model - others/ not classified
10515
RCCL
Classification by business model - retail lenders and consumer credit lenders
10515
UNI
Classification by business model - universal and investment banks
10515
GSIB
Classification by size/business model - G-SIBs
7950
SL30
Classification by size - banks with total assets less than 30 billion of EUR
7950
SM20
Classification by size - banks with total assets more than 200 billion of EUR
7950
ST10
Classification by size - banks with total assets between 30 billion and 100 billion of EUR
7950
ST20
Classification by size - banks with total assets between 100 billion and 200 billion of EUR
7950
LORI
Classification by risk - banks with low risk
7647
MHRI
Classification by risk - banks with medium, high risk and non-rated
7647
SML
Classification by business model - small market lenders
7647
DOM
Classification by geographical diversification - banks with significant domestic exposures
7622
EEA
Classification by geographical diversification - banks with largest non-domestic exposures in non-SSM EEA
7622
NEEA
Classification by geographical diversification - banks with largest non-domestic exposures in non-EEA Europe
7622
ROW
Classification by geographical diversification - banks with largest non-domestic exposures in RoW
7622
SSM
Classification by geographical diversification - banks with largest non-domestic exposures in the SSM
7622
CSCB
Classification by business model-central savings and cooperative banks
2868
EML
Classification by business model-emerging markets lenders
2868
COUNT_AREA
Code
SUP %>%
left_join (COUNT_AREA, by = "COUNT_AREA" ) %>%
group_by (COUNT_AREA, Count_area) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
FREQ
Code
SUP %>%
left_join (FREQ, by = "FREQ" ) %>%
group_by (FREQ, Freq) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
Q
Quarterly
407310
H
Half-yearly
18234
REF_AREA
Code
SUP %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
group_by (REF_AREA, Ref_area) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
B01
EU countries participating in the Single Supervisory Mechanism (SSM) (changing composition)
204410
AT
Austria
10914
BE
Belgium
10914
CY
Cyprus
10914
DE
Germany
10914
EE
Estonia
10914
ES
Spain
10914
FI
Finland
10914
FR
France
10914
GR
Greece
10914
IE
Ireland
10914
IT
Italy
10914
LT
Lithuania
10914
LU
Luxembourg
10914
LV
Latvia
10914
MT
Malta
10914
NL
Netherlands
10914
PT
Portugal
10914
SI
Slovenia
10914
SK
Slovakia
10914
BG
Bulgaria
6884
HR
Croatia
6884
COUNTERPART_SECTOR
Code
SUP %>%
left_join (COUNTERPART_SECTOR, by = "COUNTERPART_SECTOR" ) %>%
group_by (COUNTERPART_SECTOR, Counterpart_sector) %>%
summarise (Nobs = n ()) %>%
arrange (- Nobs) %>%
print_table_conditional ()
_Z
Not applicable
338778
S13
General government
24786
S11
Non financial corporations
17065
S14
Households
15725
S12R
Other financial corporations
10125
S122Z
Deposit-taking corporations except the central bank and excluding electronic money institutions principally engaged in financial intermediation
6545
S121
Central bank
6514
S1V
Non-financial corporations, households and NPISH
6006
Liquidity
Liquidity coverage ratios (LCR)
The LCR is the percentage resulting from dividing the bank’s stock of high-quality assets by the estimated total net cash outflows over a 30 calendar day stress scenario.
Code
SUP %>%
filter (CB_ITEM == "I3017" ,
REF_AREA %in% c ("U2" , "FR" , "IT" , "DE" ),
! (SBS_DI_1 == "_Z" )) %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
quarter_to_date %>%
select_if (~ n_distinct (.) > 1 ) %>%
arrange (desc (date)) %>%
left_join (colors, by = c ("Ref_area" = "country" )) %>%
mutate (OBS_VALUE = OBS_VALUE/ 100 ) %>%
ggplot (.) + theme_minimal () + xlab ("" ) + ylab ("Liquidity coverage ratio" ) +
geom_line (aes (x = date, y = OBS_VALUE, color = color, linetype = Sbs_di_1)) +
add_flags (6 ) + scale_color_identity () +
scale_x_date (breaks = seq (1960 , 2030 , 1 ) %>% paste0 ("-01-01" ) %>% as.Date,
labels = date_format ("%Y" )) +
scale_y_continuous (breaks = 0.01 * seq (0 , 500 , 50 ),
labels = percent_format (accuracy = 1 ),
limits = c (0 , 3.5 )) +
theme (legend.position = c (0.2 , 0.90 ),
legend.title = element_blank ())
Liquidity buffer
Code
SUP %>%
filter (CB_ITEM == "A6310" ,
REF_AREA %in% c ("U2" , "FR" , "IT" , "DE" )) %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
quarter_to_date %>%
select_if (~ n_distinct (.) > 1 ) %>%
arrange (desc (date)) %>%
left_join (colors, by = c ("Ref_area" = "country" )) %>%
mutate (OBS_VALUE = OBS_VALUE/ 100 ) %>%
ggplot (.) + theme_minimal () + xlab ("" ) + ylab ("Liquidity buffer" ) +
geom_line (aes (x = date, y = OBS_VALUE, color = color, linetype = Sbs_di_1)) +
add_flags (6 ) + scale_color_identity () +
scale_x_date (breaks = seq (1960 , 2030 , 1 ) %>% paste0 ("-01-01" ) %>% as.Date,
labels = date_format ("%Y" )) +
scale_y_continuous (breaks = seq (0 , 1000 , 2 )) +
theme (legend.position = c (0.2 , 0.90 ),
legend.title = element_blank ())
Net liquidity outflow
Code
SUP %>%
filter (CB_ITEM == "A6320" ,
REF_AREA %in% c ("U2" , "FR" , "IT" , "DE" )) %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
quarter_to_date %>%
select_if (~ n_distinct (.) > 1 ) %>%
arrange (desc (date)) %>%
left_join (colors, by = c ("Ref_area" = "country" )) %>%
mutate (OBS_VALUE = OBS_VALUE/ 100 ) %>%
ggplot (.) + theme_minimal () + xlab ("" ) + ylab ("Net liquidity outflow" ) +
geom_line (aes (x = date, y = OBS_VALUE, color = color, linetype = Sbs_di_1)) +
add_flags (6 ) + scale_color_identity () +
scale_x_date (breaks = seq (1960 , 2030 , 1 ) %>% paste0 ("-01-01" ) %>% as.Date,
labels = date_format ("%Y" )) +
scale_y_continuous (breaks = seq (0 , 1000 , 2 )) +
theme (legend.position = c (0.2 , 0.90 ),
legend.title = element_blank ())
Net liquidity outflow
Code
SUP %>%
filter (grepl ("Net liquidity outflow" , TITLE),
REF_AREA %in% c ("B01" , "FR" , "IT" , "DE" )) %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
quarter_to_date %>%
mutate (OBS_VALUE = OBS_VALUE/ 100 ,
Ref_area = ifelse (REF_AREA == "B01" , "Europe" , Ref_area)) %>%
select_if (~ n_distinct (.) > 1 ) %>%
left_join (colors, by = c ("Ref_area" = "country" )) %>%
na.omit %>%
ggplot (.) + theme_minimal () + xlab ("" ) + ylab ("Net liquidity outflow" ) +
geom_line (aes (x = date, y = OBS_VALUE, color = color, linetype = paste0 (SBS_DI_1, SBS_BREAKDOWN))) +
add_flags (6 ) + scale_color_identity () +
scale_x_date (breaks = seq (1960 , 2030 , 1 ) %>% paste0 ("-01-01" ) %>% as.Date,
labels = date_format ("%Y" )) +
scale_y_continuous (breaks = 0.01 * seq (0 , 500 , 50 ),
labels = percent_format (accuracy = 1 ),
limits = c (0 , 3.5 )) +
theme (legend.position = c (0.55 , 0.50 ),
legend.title = element_blank ())
Net Liquidity outflow - EU
B01 - EU countries participating in the Single Supervisory Mechanism (SSM)
Capital adequacy
https://www.bankingsupervision.europa.eu/press/pr/date/2023/html/ssm.pr2301114cb4953fd6.en.html#: :text=The%20aggregate%20capital%20ratios%20of,capital%20ratio%20stood%20at%2018.68%25.
Code
SUP %>%
filter (grepl ("Common equity Tier 1 ratio" , TITLE),
REF_AREA %in% c ("U2" , "FR" , "IT" , "DE" )) %>%
left_join (REF_AREA, by = "REF_AREA" ) %>%
left_join (SBS_DI_1, by = "SBS_DI_1" ) %>%
quarter_to_date %>%
select_if (~ n_distinct (.) > 1 ) %>%
left_join (colors, by = c ("Ref_area" = "country" )) %>%
mutate (OBS_VALUE = OBS_VALUE/ 100 ) %>%
ggplot (.) + theme_minimal () + xlab ("" ) + ylab ("Net Interest Margin" ) +
geom_line (aes (x = date, y = OBS_VALUE, color = color, linetype = Sbs_di_1)) +
add_flags (6 ) + scale_color_identity () +
scale_x_date (breaks = seq (1960 , 2030 , 1 ) %>% paste0 ("-01-01" ) %>% as.Date,
labels = date_format ("%Y" )) +
scale_y_continuous (breaks = 0.01 * seq (- 10 , 50 , 1 ),
labels = percent_format (accuracy = .1 )) +
theme (legend.position = c (0.25 , 0.90 ),
legend.title = element_blank ())